qq1194550395 2 місяців тому
батько
коміт
47ab05e3eb
100 змінених файлів з 1496 додано та 119 видалено
  1. 2 3
      requirements.txt
  2. 106 0
      runs/detect/train8/args.yaml
  3. BIN
      runs/detect/train8/events.out.tfevents.1756169097.ERAZE-YGPCJEKGQ.86852.0
  4. 106 0
      runs/train/exp/args.yaml
  5. BIN
      runs/train/exp/events.out.tfevents.1756169641.ERAZE-YGPCJEKGQ.80464.0
  6. BIN
      runs/train/exp/labels.jpg
  7. BIN
      runs/train/exp/labels_correlogram.jpg
  8. BIN
      runs/train/exp/train_batch0.jpg
  9. BIN
      runs/train/exp2/F1_curve.png
  10. BIN
      runs/train/exp2/PR_curve.png
  11. BIN
      runs/train/exp2/P_curve.png
  12. BIN
      runs/train/exp2/R_curve.png
  13. 106 0
      runs/train/exp2/args.yaml
  14. BIN
      runs/train/exp2/confusion_matrix.png
  15. BIN
      runs/train/exp2/confusion_matrix_normalized.png
  16. BIN
      runs/train/exp2/events.out.tfevents.1756171332.ERAZE-YGPCJEKGQ.19920.0
  17. BIN
      runs/train/exp2/labels.jpg
  18. BIN
      runs/train/exp2/labels_correlogram.jpg
  19. 501 0
      runs/train/exp2/results.csv
  20. BIN
      runs/train/exp2/results.png
  21. BIN
      runs/train/exp2/train_batch0.jpg
  22. BIN
      runs/train/exp2/train_batch1.jpg
  23. BIN
      runs/train/exp2/train_batch2.jpg
  24. BIN
      runs/train/exp2/train_batch67130.jpg
  25. BIN
      runs/train/exp2/train_batch67131.jpg
  26. BIN
      runs/train/exp2/train_batch67132.jpg
  27. BIN
      runs/train/exp2/val_batch0_labels.jpg
  28. BIN
      runs/train/exp2/val_batch0_pred.jpg
  29. BIN
      runs/train/exp2/val_batch1_labels.jpg
  30. BIN
      runs/train/exp2/val_batch1_pred.jpg
  31. BIN
      runs/train/exp2/val_batch2_labels.jpg
  32. BIN
      runs/train/exp2/val_batch2_pred.jpg
  33. BIN
      runs/train/exp2/weights/best.pt
  34. BIN
      runs/train/exp2/weights/last.pt
  35. 324 0
      ultralytics.egg-info/PKG-INFO
  36. 254 0
      ultralytics.egg-info/SOURCES.txt
  37. 1 0
      ultralytics.egg-info/dependency_links.txt
  38. 3 0
      ultralytics.egg-info/entry_points.txt
  39. 67 0
      ultralytics.egg-info/requires.txt
  40. 1 0
      ultralytics.egg-info/top_level.txt
  41. BIN
      ultralytics/__pycache__/__init__.cpython-313.pyc
  42. BIN
      ultralytics/cfg/__pycache__/__init__.cpython-313.pyc
  43. 0 115
      ultralytics/cfg/datasets/coco.yaml
  44. 24 0
      ultralytics/cfg/datasets/yolov13.yaml
  45. 1 1
      ultralytics/cfg/models/v13/yolov13.yaml
  46. BIN
      ultralytics/data/__pycache__/__init__.cpython-313.pyc
  47. BIN
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  50. BIN
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  51. BIN
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  52. BIN
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  53. BIN
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  54. BIN
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  55. BIN
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  56. BIN
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  58. BIN
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  59. BIN
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  60. BIN
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  61. BIN
      ultralytics/hub/__pycache__/__init__.cpython-313.pyc
  62. BIN
      ultralytics/hub/__pycache__/auth.cpython-313.pyc
  63. BIN
      ultralytics/hub/__pycache__/session.cpython-313.pyc
  64. BIN
      ultralytics/hub/__pycache__/utils.cpython-313.pyc
  65. BIN
      ultralytics/models/__pycache__/__init__.cpython-313.pyc
  66. BIN
      ultralytics/models/fastsam/__pycache__/__init__.cpython-313.pyc
  67. BIN
      ultralytics/models/fastsam/__pycache__/model.cpython-313.pyc
  68. BIN
      ultralytics/models/fastsam/__pycache__/predict.cpython-313.pyc
  69. BIN
      ultralytics/models/fastsam/__pycache__/utils.cpython-313.pyc
  70. BIN
      ultralytics/models/fastsam/__pycache__/val.cpython-313.pyc
  71. BIN
      ultralytics/models/nas/__pycache__/__init__.cpython-313.pyc
  72. BIN
      ultralytics/models/nas/__pycache__/model.cpython-313.pyc
  73. BIN
      ultralytics/models/nas/__pycache__/predict.cpython-313.pyc
  74. BIN
      ultralytics/models/nas/__pycache__/val.cpython-313.pyc
  75. BIN
      ultralytics/models/rtdetr/__pycache__/__init__.cpython-313.pyc
  76. BIN
      ultralytics/models/rtdetr/__pycache__/model.cpython-313.pyc
  77. BIN
      ultralytics/models/rtdetr/__pycache__/predict.cpython-313.pyc
  78. BIN
      ultralytics/models/rtdetr/__pycache__/train.cpython-313.pyc
  79. BIN
      ultralytics/models/rtdetr/__pycache__/val.cpython-313.pyc
  80. BIN
      ultralytics/models/sam/__pycache__/__init__.cpython-313.pyc
  81. BIN
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  83. BIN
      ultralytics/models/sam/__pycache__/model.cpython-313.pyc
  84. BIN
      ultralytics/models/sam/__pycache__/predict.cpython-313.pyc
  85. BIN
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  86. BIN
      ultralytics/models/sam/modules/__pycache__/blocks.cpython-313.pyc
  87. BIN
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  88. BIN
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  89. BIN
      ultralytics/models/sam/modules/__pycache__/memory_attention.cpython-313.pyc
  90. BIN
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  91. BIN
      ultralytics/models/sam/modules/__pycache__/tiny_encoder.cpython-313.pyc
  92. BIN
      ultralytics/models/sam/modules/__pycache__/transformer.cpython-313.pyc
  93. BIN
      ultralytics/models/sam/modules/__pycache__/utils.cpython-313.pyc
  94. BIN
      ultralytics/models/yolo/__pycache__/__init__.cpython-313.pyc
  95. BIN
      ultralytics/models/yolo/__pycache__/model.cpython-313.pyc
  96. BIN
      ultralytics/models/yolo/classify/__pycache__/__init__.cpython-313.pyc
  97. BIN
      ultralytics/models/yolo/classify/__pycache__/predict.cpython-313.pyc
  98. BIN
      ultralytics/models/yolo/classify/__pycache__/train.cpython-313.pyc
  99. BIN
      ultralytics/models/yolo/classify/__pycache__/val.cpython-313.pyc
  100. BIN
      ultralytics/models/yolo/detect/__pycache__/__init__.cpython-313.pyc

+ 2 - 3
requirements.txt

@@ -1,6 +1,5 @@
-torch==2.2.2 
-torchvision==0.17.2
-flash_attn-2.7.3+cu11torch2.2cxx11abiFALSE-cp311-cp311-linux_x86_64.whl
+
+
 timm==1.0.14
 albumentations==2.0.4
 onnx==1.14.0

+ 106 - 0
runs/detect/train8/args.yaml

@@ -0,0 +1,106 @@
+task: detect
+mode: train
+model: ultralytics/cfg/models/v13/yolov13.yaml
+data: ultralytics/cfg/datasets/yolov13.yaml
+epochs: 600
+time: null
+patience: 100
+batch: 256
+imgsz: 640
+save: true
+save_period: -1
+cache: false
+device: '0'
+workers: 8
+project: null
+name: train8
+exist_ok: false
+pretrained: true
+optimizer: auto
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+val: true
+split: val
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+conf: null
+iou: 0.7
+max_det: 300
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runs/detect/train8/events.out.tfevents.1756169097.ERAZE-YGPCJEKGQ.86852.0


+ 106 - 0
runs/train/exp/args.yaml

@@ -0,0 +1,106 @@
+task: detect
+mode: train
+model: ultralytics/cfg/models/v13/yolov13.yaml
+data: ultralytics/cfg/datasets/yolov13.yaml
+epochs: 500
+time: null
+patience: 100
+batch: 32
+imgsz: 640
+save: true
+save_period: -1
+cache: false
+device: ''
+workers: 0
+project: runs/train
+name: exp
+exist_ok: false
+pretrained: true
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+tracker: botsort.yaml
+save_dir: runs\train\exp

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runs/train/exp/events.out.tfevents.1756169641.ERAZE-YGPCJEKGQ.80464.0


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runs/train/exp/labels.jpg


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runs/train/exp/labels_correlogram.jpg


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runs/train/exp/train_batch0.jpg


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runs/train/exp2/F1_curve.png


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runs/train/exp2/PR_curve.png


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runs/train/exp2/P_curve.png


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runs/train/exp2/R_curve.png


+ 106 - 0
runs/train/exp2/args.yaml

@@ -0,0 +1,106 @@
+task: detect
+mode: train
+model: ultralytics/cfg/models/v13/yolov13.yaml
+data: ultralytics/cfg/datasets/yolov13.yaml
+epochs: 500
+time: null
+patience: 100
+batch: 8
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+name: exp2
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+save_dir: runs\train\exp2

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runs/train/exp2/confusion_matrix.png


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runs/train/exp2/confusion_matrix_normalized.png


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runs/train/exp2/events.out.tfevents.1756171332.ERAZE-YGPCJEKGQ.19920.0


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runs/train/exp2/labels.jpg


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runs/train/exp2/labels_correlogram.jpg


+ 501 - 0
runs/train/exp2/results.csv

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ultralytics.egg-info/PKG-INFO

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+Metadata-Version: 2.4
+Name: ultralytics
+Version: 8.3.63
+Summary: Ultralytics YOLO 🚀 for SOTA object detection, multi-object tracking, instance segmentation, pose estimation and image classification.
+Author-email: Glenn Jocher <glenn.jocher@ultralytics.com>, Jing Qiu <jing.qiu@ultralytics.com>
+Maintainer-email: Ultralytics <hello@ultralytics.com>
+License: AGPL-3.0
+Project-URL: Homepage, https://ultralytics.com
+Project-URL: Source, https://github.com/ultralytics/ultralytics
+Project-URL: Documentation, https://docs.ultralytics.com
+Project-URL: Bug Reports, https://github.com/ultralytics/ultralytics/issues
+Project-URL: Changelog, https://github.com/ultralytics/ultralytics/releases
+Keywords: machine-learning,deep-learning,computer-vision,ML,DL,AI,YOLO,YOLOv3,YOLOv5,YOLOv8,YOLOv9,YOLOv10,YOLO11,HUB,Ultralytics
+Classifier: Development Status :: 4 - Beta
+Classifier: Intended Audience :: Developers
+Classifier: Intended Audience :: Education
+Classifier: Intended Audience :: Science/Research
+Classifier: License :: OSI Approved :: GNU Affero General Public License v3 or later (AGPLv3+)
+Classifier: Programming Language :: Python :: 3
+Classifier: Programming Language :: Python :: 3.8
+Classifier: Programming Language :: Python :: 3.9
+Classifier: Programming Language :: Python :: 3.10
+Classifier: Programming Language :: Python :: 3.11
+Classifier: Programming Language :: Python :: 3.12
+Classifier: Topic :: Software Development
+Classifier: Topic :: Scientific/Engineering
+Classifier: Topic :: Scientific/Engineering :: Artificial Intelligence
+Classifier: Topic :: Scientific/Engineering :: Image Recognition
+Classifier: Operating System :: POSIX :: Linux
+Classifier: Operating System :: MacOS
+Classifier: Operating System :: Microsoft :: Windows
+Requires-Python: >=3.8
+Description-Content-Type: text/markdown
+License-File: LICENSE
+Requires-Dist: numpy>=1.23.0
+Requires-Dist: numpy<2.0.0; sys_platform == "darwin"
+Requires-Dist: matplotlib>=3.3.0
+Requires-Dist: opencv-python>=4.6.0
+Requires-Dist: pillow>=7.1.2
+Requires-Dist: pyyaml>=5.3.1
+Requires-Dist: requests>=2.23.0
+Requires-Dist: scipy>=1.4.1
+Requires-Dist: torch>=1.8.0
+Requires-Dist: torch!=2.4.0,>=1.8.0; sys_platform == "win32"
+Requires-Dist: torchvision>=0.9.0
+Requires-Dist: tqdm>=4.64.0
+Requires-Dist: psutil
+Requires-Dist: py-cpuinfo
+Requires-Dist: pandas>=1.1.4
+Requires-Dist: seaborn>=0.11.0
+Requires-Dist: ultralytics-thop>=2.0.0
+Provides-Extra: dev
+Requires-Dist: ipython; extra == "dev"
+Requires-Dist: pytest; extra == "dev"
+Requires-Dist: pytest-cov; extra == "dev"
+Requires-Dist: coverage[toml]; extra == "dev"
+Requires-Dist: mkdocs>=1.6.0; extra == "dev"
+Requires-Dist: mkdocs-material>=9.5.9; extra == "dev"
+Requires-Dist: mkdocstrings[python]; extra == "dev"
+Requires-Dist: mkdocs-redirects; extra == "dev"
+Requires-Dist: mkdocs-ultralytics-plugin>=0.1.8; extra == "dev"
+Requires-Dist: mkdocs-macros-plugin>=1.0.5; extra == "dev"
+Provides-Extra: export
+Requires-Dist: onnx>=1.12.0; extra == "export"
+Requires-Dist: coremltools>=7.0; (platform_system != "Windows" and python_version <= "3.11") and extra == "export"
+Requires-Dist: scikit-learn>=1.3.2; (platform_system != "Windows" and python_version <= "3.11") and extra == "export"
+Requires-Dist: openvino>=2024.0.0; extra == "export"
+Requires-Dist: tensorflow>=2.0.0; extra == "export"
+Requires-Dist: tensorflowjs>=3.9.0; extra == "export"
+Requires-Dist: tensorstore>=0.1.63; (platform_machine == "aarch64" and python_version >= "3.9") and extra == "export"
+Requires-Dist: keras; extra == "export"
+Requires-Dist: flatbuffers<100,>=23.5.26; platform_machine == "aarch64" and extra == "export"
+Requires-Dist: numpy==1.23.5; platform_machine == "aarch64" and extra == "export"
+Requires-Dist: h5py!=3.11.0; platform_machine == "aarch64" and extra == "export"
+Provides-Extra: solutions
+Requires-Dist: shapely>=2.0.0; extra == "solutions"
+Requires-Dist: streamlit; extra == "solutions"
+Provides-Extra: logging
+Requires-Dist: comet; extra == "logging"
+Requires-Dist: tensorboard>=2.13.0; extra == "logging"
+Requires-Dist: dvclive>=2.12.0; extra == "logging"
+Provides-Extra: extra
+Requires-Dist: hub-sdk>=0.0.12; extra == "extra"
+Requires-Dist: ipython; extra == "extra"
+Requires-Dist: albumentations>=1.4.6; extra == "extra"
+Requires-Dist: pycocotools>=2.0.7; extra == "extra"
+Dynamic: license-file
+
+<p align="center">
+    <img src="assets/icon.png" width="110" style="margin-bottom: 0.2;"/>
+<p>
+<h2 align="center">YOLOv13: Real-Time Object Detection with Hypergraph-Enhanced Adaptive Visual Perception</h2>
+
+<p align="center">
+    <a href="https://arxiv.org/abs/2506.17733">
+    <img src="https://img.shields.io/badge/arXiv-Paper-b31b1b.svg" alt="arXiv">
+  </a>
+  <a href="https://github.com/iMoonLab">
+    <img src="https://img.shields.io/badge/iMoonLab-Homepage-blueviolet.svg" alt="iMoonLab">
+  </a>
+</p>
+
+  
+<div align="center">
+    <img src="assets/framework.png">
+</div>
+
+## Updates
+
+- 2025/07/19: [HuggingFace Spaces Demo](https://huggingface.co/spaces/atalaydenknalbant/Yolov13) is online. Thanks to [Atalay](https://github.com/atalaydenknalbant)!
+
+- 2025/06/27: [Converting YOLOv13](https://github.com/kaylorchen/ai_framework_demo) to Huawei Ascend (OM), Rockchip (RKNN) formats is supported. Thanks to [kaylorchen](https://github.com/kaylorchen)!
+
+- 2025/06/25: [FastAPI REST API](https://github.com/iMoonLab/yolov13/tree/main/examples/YOLOv13-FastAPI-REST-API) is supported. Thanks to [MohibShaikh](https://github.com/MohibShaikh)!
+
+- 2025/06/24: 🔥 **The paper of YOLOv13 can be downloaded**: [🔗 YOLOv13: Real-Time Object Detection with Hypergraph-Enhanced Adaptive Visual Perception](https://arxiv.org/abs/2506.17733).
+
+- 2025/06/24: [Android deployment](https://github.com/mpj1234/ncnn-yolov13-android/tree/main) is supported. Thanks to [mpj1234](https://github.com/mpj1234)!
+
+- 2025/06/22: YOLOv13 model weights released.
+
+- 2025/06/21: The code of YOLOv13 has been open-sourced.
+
+
+
+<h2>Table of Contents</h2>
+
+- [Technical Briefing 💡](#technical-briefing-)
+- [Main Results 🏆](#main-results-)
+  - [1. MS COCO Benchmark](#1-ms-coco-benchmark)
+  - [2. Visualizations](#2-visualizations)
+- [Quick Start 🚀](#quick-start-)
+  - [1. Install Dependencies](#1-install-dependencies)
+  - [2. Validation](#2-validation)
+  - [3. Training](#3-training)
+  - [4. Prediction](#4-prediction)
+  - [5. Export](#5-export)
+- [Related Projects 🔗](#related-projects-)
+- [Cite YOLOv13 📝](#cite-yolov13-)
+
+
+
+## Technical Briefing 💡
+
+
+**Introducing YOLOv13**—the next-generation real-time detector with cutting-edge performance and efficiency. YOLOv13 family includes four variants: Nano, Small, Large, and X-Large, powered by:
+
+* **HyperACE: Hypergraph-based Adaptive Correlation Enhancement**
+
+  * Treats pixels in multi-scale feature maps as hypergraph vertices.
+  * Adopts a learnable hyperedge construction module to adaptively exploring high-order correlations between vertices.
+  * A message passing module with linear complexity is leveraged to effectively aggregate multi-scale features with the guidance of high-order correlations to achieve effective visual perception of complex scenarios.
+
+* **FullPAD: Full-Pipeline Aggregation-and-Distribution Paradigm**
+
+  * Uses the HyperACE to aggregate multi-scale features of the backbone and extract high-order correlations in the hypergraph space.
+  * FullPAD paradigm further leverages three separate tunnels to forward these correlation-enhanced features to the connection between the backbone and neck, the internal layers of the neck, and the connection between the neck and head, respectively. In this way, YOLOv13 achieves fine‑grained information flow and representational synergy across the entire pipeline.
+  * FullPAD significantly improves gradient propagation and enhances the detection performance.
+
+* **Model Lightweighting via DS-based Blocks**
+
+  * Replaces large-kernel convolutions with blocks building based on depthwise separable convolutions (DSConv, DS-Bottleneck, DS-C3k, DS-C3k2), preserving receptive field while greatly reducing parameters and computation.
+  * Achieves faster inference speed without sacrificing accuracy.
+
+> YOLOv13 seamlessly combines hypergraph computation with end-to-end information collaboration to deliver a more accurate, robust, and efficient real-time detection solution.
+
+
+
+## Main Results 🏆
+
+### 1. MS COCO Benchmark
+
+**Table 1. Quantitative comparison with other state-of-the-art real-time object detectors on the MS COCO dataset**
+
+
+| **Method** | **FLOPs (G)** | **Parameters(M)** | **AP<sub>50:95</sub><sup>val</sup>** | **AP<sub>50</sub><sup>val</sup>** | **AP<sub>75</sub><sup>val</sup>** | **Latency (ms)** |
+| :--- | :---: | :---: | :---: | :---: | :---: | :---: |
+| YOLOv6-3.0-N | 11.4 | 4.7 | 37.0 | 52.7 | – | 2.74 |
+| Gold-YOLO-N | 12.1 | 5.6 | 39.6 | 55.7 | – | 2.97 |
+| YOLOv8-N | 8.7 | 3.2 | 37.4 | 52.6 | 40.5 | 1.77 |
+| YOLOv10-N | 6.7 | 2.3 | 38.5 | 53.8 | 41.7 | 1.84 |
+| YOLO11-N | 6.5 | 2.6 | 38.6 | 54.2 | 41.6 | 1.53 |
+| YOLOv12-N | 6.5 | 2.6 | 40.1 | 56.0 | 43.4 | 1.83 |
+| **YOLOv13-N** | **6.4** | **2.5** | **41.6** | **57.8** | **45.1** | **1.97** |
+|           |           |            |                 |           | 
+| YOLOv6-3.0-S | 45.3 | 18.5 | 44.3 | 61.2 | – | 3.42 |
+| Gold-YOLO-S | 46.0 | 21.5 | 45.4 | 62.5 | – | 3.82 |
+| YOLOv8-S | 28.6 | 11.2 | 45.0 | 61.8 | 48.7 | 2.33 |
+| RT-DETR-R18 | 60.0 | 20.0 | 46.5 | 63.8 | – | 4.58 |
+| RT-DETRv2-R18 | 60.0 | 20.0 | 47.9 | 64.9 | – | 4.58 |
+| YOLOv9-S | 26.4 | 7.1 | 46.8 | 63.4 | 50.7 | 3.44 |
+| YOLOv10-S | 21.6 | 7.2 | 46.3 | 63.0 | 50.4 | 2.53 |
+| YOLO11-S | 21.5 | 9.4 | 45.8 | 62.6 | 49.8 | 2.56 |
+| YOLOv12-S | 21.4 | 9.3 | 47.1 | 64.2 | 51.0 | 2.82 |
+| **YOLOv13-S** | **20.8** | **9.0** | **48.0** | **65.2** | **52.0** | **2.98** |
+|           |           |            |                 |           | 
+| YOLOv6-3.0-L | 150.7 | 59.6 | 51.8 | 69.2 | – | 9.01 |
+| Gold-YOLO-L | 151.7 | 75.1 | 51.8 | 68.9 | – | 10.69 |
+| YOLOv8-L | 165.2 | 43.7 | 53.0 | 69.8 | 57.7 | 8.13 |
+| RT-DETR-R50 | 136.0 | 42.0 | 53.1 | 71.3 | – | 6.93 |
+| RT-DETRv2-R50 | 136.0 | 42.0 | 53.4 | 71.6 | – | 6.93 |
+| YOLOv9-C | 102.1 | 25.3 | 53.0 | 70.2 | 57.8 | 6.64 |
+| YOLOv10-L | 120.3 | 24.4 | 53.2 | 70.1 | 57.2 | 7.31 |
+| YOLO11-L | 86.9 | 25.3 | 52.3 | 69.2 | 55.7 | 6.23 |
+| YOLOv12-L | 88.9 | 26.4 | 53.0 | 70.0 | 57.9 | 7.10 |
+| **YOLOv13-L** | **88.4** | **27.6** | **53.4** | **70.9** | **58.1** | **8.63** |
+|           |           |            |                 |           | 
+| YOLOv8-X | 257.8 | 68.2 | 54.0 | 71.0 | 58.8 | 12.83 |
+| RT-DETR-R101 | 259.0 | 76.0 | 54.3 | 72.7 | – | 13.51 |
+| RT-DETRv2-R101| 259.0 | 76.0 | 54.3 | 72.8 | – | 13.51 |
+| YOLOv10-X | 160.4 | 29.5 | 54.4 | 71.3 | 59.3 | 10.70 |
+| YOLO11-X | 194.9 | 56.9 | 54.2 | 71.0 | 59.1 | 11.35 |
+| YOLOv12-X | 199.0 | 59.1 | 54.4 | 71.1 | 59.3 | 12.46 |
+| **YOLOv13-X** | **199.2** | **64.0** | **54.8** | **72.0** | **59.8** | **14.67** |
+
+
+### 2. Visualizations
+
+<div>
+    <img src="assets/vis.png" width="100%" height="100%">
+</div>
+
+**Visualization examples of YOLOv10-N/S, YOLO11-N/S, YOLOv12-N/S, and YOLOv13-N/S.**
+
+<div>
+    <img src="assets/hyperedge.png" width="60%" height="60%">
+</div>
+
+**Representative visualization examples of adaptive hyperedges. The hyperedges in the first and second columns mainly focus on the high-order interactions among objects in the foreground. The third column mainly focuses on the high-order interactions between the background and part of the foreground. The visualization of these hyperedges can intuitively reflect the high-order visual associations modeled by the YOLOv13.**
+
+
+
+## Quick Start 🚀
+
+### 1. Install Dependencies
+
+```
+wget https://github.com/Dao-AILab/flash-attention/releases/download/v2.7.3/flash_attn-2.7.3+cu11torch2.2cxx11abiFALSE-cp311-cp311-linux_x86_64.whl
+conda create -n yolov13 python=3.11
+conda activate yolov13
+pip install -r requirements.txt
+pip install -e .
+```
+YOLOv13 suppports Flash Attention acceleration.
+
+### 2. Validation
+[`YOLOv13-N`](https://github.com/iMoonLab/yolov13/releases/download/yolov13/yolov13n.pt)
+[`YOLOv13-S`](https://github.com/iMoonLab/yolov13/releases/download/yolov13/yolov13s.pt)
+[`YOLOv13-L`](https://github.com/iMoonLab/yolov13/releases/download/yolov13/yolov13l.pt)
+[`YOLOv13-X`](https://github.com/iMoonLab/yolov13/releases/download/yolov13/yolov13x.pt)
+
+Use the following code to validate the YOLOv13 models on the COCO dataset. Make sure to replace `{n/s/l/x}` with the desired model scale (nano, small, plus, or ultra).
+```python
+from ultralytics import YOLO
+
+model = YOLO('yolov13{n/s/l/x}.pt')  # Replace with the desired model scale
+```
+
+### 3. Training
+
+Use the following code to train the YOLOv13 models. Make sure to replace `yolov13n.yaml` with the desired model configuration file path, and `coco.yaml` with your coco dataset configuration file.
+```python
+from ultralytics import YOLO
+
+model = YOLO('yolov13n.yaml')
+
+# Train the model
+results = model.train(
+  data='coco.yaml',
+  epochs=600, 
+  batch=256, 
+  imgsz=640,
+  scale=0.5,  # S:0.9; L:0.9; X:0.9
+  mosaic=1.0,
+  mixup=0.0,  # S:0.05; L:0.15; X:0.2
+  copy_paste=0.1,  # S:0.15; L:0.5; X:0.6
+  device="0,1,2,3",
+)
+
+# Evaluate model performance on the validation set
+metrics = model.val('coco.yaml')
+
+# Perform object detection on an image
+results = model("path/to/your/image.jpg")
+results[0].show()
+
+```
+
+
+### 4. Prediction
+Use the following code to perform object detection using the YOLOv13 models. Make sure to replace `{n/s/l/x}` with the desired model scale.
+```python
+from ultralytics import YOLO
+
+model = YOLO('yolov13{n/s/l/x}.pt')  # Replace with the desired model scale
+model.predict()
+```
+
+### 5. Export
+Use the following code to export the YOLOv13 models to ONNX or TensorRT format. Make sure to replace `{n/s/l/x}` with the desired model scale.
+```python
+from ultralytics import YOLO
+model = YOLO('yolov13{n/s/l/x}.pt')  # Replace with the desired model scale
+model.export(format="engine", half=True)  # or format="onnx"
+```
+
+## Related Projects 🔗
+
+- The code is based on [Ultralytics](https://github.com/ultralytics/ultralytics). Thanks for their excellent work!
+- Other wonderful works about Hypergraph Computation:
+  - "Hypergraph Neural Networks": [[paper](https://arxiv.org/abs/1809.09401)] [[code](https://github.com/iMoonLab/HGNN)]
+  - "HGNN+: General Hypergraph Nerual Networks": [[paper](https://ieeexplore.ieee.org/abstract/document/9795251)] [[code](https://github.com/iMoonLab/DeepHypergraph)]
+  - "SoftHGNN: Soft Hypergraph Neural Networks for General Visual Recognition": [[paper](https://arxiv.org/abs/2505.15325)] [[code](https://github.com/Mengqi-Lei/SoftHGNN)]
+
+## Cite YOLOv13 📝
+```bibtex
+@article{yolov13,
+  title={YOLOv13: Real-Time Object Detection with Hypergraph-Enhanced Adaptive Visual Perception},
+  author={Lei, Mengqi and Li, Siqi and Wu, Yihong and et al.},
+  journal={arXiv preprint arXiv:2506.17733},
+  year={2025}
+}
+```
+

+ 254 - 0
ultralytics.egg-info/SOURCES.txt

@@ -0,0 +1,254 @@
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+pyproject.toml
+tests/test_cli.py
+tests/test_cuda.py
+tests/test_engine.py
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+ultralytics/assets/zidane.jpg
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+ultralytics/cfg/datasets/DOTAv1.5.yaml
+ultralytics/cfg/datasets/DOTAv1.yaml
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+ultralytics/cfg/datasets/Objects365.yaml
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+ultralytics/cfg/datasets/VOC.yaml
+ultralytics/cfg/datasets/VisDrone.yaml
+ultralytics/cfg/datasets/african-wildlife.yaml
+ultralytics/cfg/datasets/brain-tumor.yaml
+ultralytics/cfg/datasets/carparts-seg.yaml
+ultralytics/cfg/datasets/coco-pose.yaml
+ultralytics/cfg/datasets/coco128-seg.yaml
+ultralytics/cfg/datasets/coco128.yaml
+ultralytics/cfg/datasets/coco8-pose.yaml
+ultralytics/cfg/datasets/coco8-seg.yaml
+ultralytics/cfg/datasets/coco8.yaml
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+ultralytics/cfg/datasets/hand-keypoints.yaml
+ultralytics/cfg/datasets/lvis.yaml
+ultralytics/cfg/datasets/medical-pills.yaml
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+ultralytics/models/sam/__init__.py
+ultralytics/models/sam/amg.py
+ultralytics/models/sam/build.py
+ultralytics/models/sam/model.py
+ultralytics/models/sam/predict.py
+ultralytics/models/sam/modules/__init__.py
+ultralytics/models/sam/modules/blocks.py
+ultralytics/models/sam/modules/decoders.py
+ultralytics/models/sam/modules/encoders.py
+ultralytics/models/sam/modules/memory_attention.py
+ultralytics/models/sam/modules/sam.py
+ultralytics/models/sam/modules/tiny_encoder.py
+ultralytics/models/sam/modules/transformer.py
+ultralytics/models/sam/modules/utils.py
+ultralytics/models/utils/__init__.py
+ultralytics/models/utils/loss.py
+ultralytics/models/utils/ops.py
+ultralytics/models/yolo/__init__.py
+ultralytics/models/yolo/model.py
+ultralytics/models/yolo/classify/__init__.py
+ultralytics/models/yolo/classify/predict.py
+ultralytics/models/yolo/classify/train.py
+ultralytics/models/yolo/classify/val.py
+ultralytics/models/yolo/detect/__init__.py
+ultralytics/models/yolo/detect/predict.py
+ultralytics/models/yolo/detect/train.py
+ultralytics/models/yolo/detect/val.py
+ultralytics/models/yolo/obb/__init__.py
+ultralytics/models/yolo/obb/predict.py
+ultralytics/models/yolo/obb/train.py
+ultralytics/models/yolo/obb/val.py
+ultralytics/models/yolo/pose/__init__.py
+ultralytics/models/yolo/pose/predict.py
+ultralytics/models/yolo/pose/train.py
+ultralytics/models/yolo/pose/val.py
+ultralytics/models/yolo/segment/__init__.py
+ultralytics/models/yolo/segment/predict.py
+ultralytics/models/yolo/segment/train.py
+ultralytics/models/yolo/segment/val.py
+ultralytics/models/yolo/world/__init__.py
+ultralytics/models/yolo/world/train.py
+ultralytics/models/yolo/world/train_world.py
+ultralytics/nn/__init__.py
+ultralytics/nn/autobackend.py
+ultralytics/nn/tasks.py
+ultralytics/nn/modules/__init__.py
+ultralytics/nn/modules/activation.py
+ultralytics/nn/modules/block.py
+ultralytics/nn/modules/conv.py
+ultralytics/nn/modules/head.py
+ultralytics/nn/modules/transformer.py
+ultralytics/nn/modules/utils.py
+ultralytics/solutions/__init__.py
+ultralytics/solutions/ai_gym.py
+ultralytics/solutions/analytics.py
+ultralytics/solutions/distance_calculation.py
+ultralytics/solutions/heatmap.py
+ultralytics/solutions/object_counter.py
+ultralytics/solutions/parking_management.py
+ultralytics/solutions/queue_management.py
+ultralytics/solutions/region_counter.py
+ultralytics/solutions/security_alarm.py
+ultralytics/solutions/solutions.py
+ultralytics/solutions/speed_estimation.py
+ultralytics/solutions/streamlit_inference.py
+ultralytics/solutions/trackzone.py
+ultralytics/trackers/__init__.py
+ultralytics/trackers/basetrack.py
+ultralytics/trackers/bot_sort.py
+ultralytics/trackers/byte_tracker.py
+ultralytics/trackers/track.py
+ultralytics/trackers/utils/__init__.py
+ultralytics/trackers/utils/gmc.py
+ultralytics/trackers/utils/kalman_filter.py
+ultralytics/trackers/utils/matching.py
+ultralytics/utils/__init__.py
+ultralytics/utils/autobatch.py
+ultralytics/utils/benchmarks.py
+ultralytics/utils/checks.py
+ultralytics/utils/dist.py
+ultralytics/utils/downloads.py
+ultralytics/utils/errors.py
+ultralytics/utils/files.py
+ultralytics/utils/instance.py
+ultralytics/utils/loss.py
+ultralytics/utils/metrics.py
+ultralytics/utils/ops.py
+ultralytics/utils/patches.py
+ultralytics/utils/plotting.py
+ultralytics/utils/tal.py
+ultralytics/utils/torch_utils.py
+ultralytics/utils/triton.py
+ultralytics/utils/tuner.py
+ultralytics/utils/callbacks/__init__.py
+ultralytics/utils/callbacks/base.py
+ultralytics/utils/callbacks/clearml.py
+ultralytics/utils/callbacks/comet.py
+ultralytics/utils/callbacks/dvc.py
+ultralytics/utils/callbacks/hub.py
+ultralytics/utils/callbacks/mlflow.py
+ultralytics/utils/callbacks/neptune.py
+ultralytics/utils/callbacks/raytune.py
+ultralytics/utils/callbacks/tensorboard.py
+ultralytics/utils/callbacks/wb.py

+ 1 - 0
ultralytics.egg-info/dependency_links.txt

@@ -0,0 +1 @@
+

+ 3 - 0
ultralytics.egg-info/entry_points.txt

@@ -0,0 +1,3 @@
+[console_scripts]
+ultralytics = ultralytics.cfg:entrypoint
+yolo = ultralytics.cfg:entrypoint

+ 67 - 0
ultralytics.egg-info/requires.txt

@@ -0,0 +1,67 @@
+numpy>=1.23.0
+matplotlib>=3.3.0
+opencv-python>=4.6.0
+pillow>=7.1.2
+pyyaml>=5.3.1
+requests>=2.23.0
+scipy>=1.4.1
+torch>=1.8.0
+torchvision>=0.9.0
+tqdm>=4.64.0
+psutil
+py-cpuinfo
+pandas>=1.1.4
+seaborn>=0.11.0
+ultralytics-thop>=2.0.0
+
+[:sys_platform == "darwin"]
+numpy<2.0.0
+
+[:sys_platform == "win32"]
+torch!=2.4.0,>=1.8.0
+
+[dev]
+ipython
+pytest
+pytest-cov
+coverage[toml]
+mkdocs>=1.6.0
+mkdocs-material>=9.5.9
+mkdocstrings[python]
+mkdocs-redirects
+mkdocs-ultralytics-plugin>=0.1.8
+mkdocs-macros-plugin>=1.0.5
+
+[export]
+onnx>=1.12.0
+openvino>=2024.0.0
+tensorflow>=2.0.0
+tensorflowjs>=3.9.0
+keras
+
+[export:platform_machine == "aarch64"]
+flatbuffers<100,>=23.5.26
+numpy==1.23.5
+h5py!=3.11.0
+
+[export:platform_machine == "aarch64" and python_version >= "3.9"]
+tensorstore>=0.1.63
+
+[export:platform_system != "Windows" and python_version <= "3.11"]
+coremltools>=7.0
+scikit-learn>=1.3.2
+
+[extra]
+hub-sdk>=0.0.12
+ipython
+albumentations>=1.4.6
+pycocotools>=2.0.7
+
+[logging]
+comet
+tensorboard>=2.13.0
+dvclive>=2.12.0
+
+[solutions]
+shapely>=2.0.0
+streamlit

+ 1 - 0
ultralytics.egg-info/top_level.txt

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+ultralytics

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+ 0 - 115
ultralytics/cfg/datasets/coco.yaml

@@ -1,115 +0,0 @@
-# Ultralytics 🚀 AGPL-3.0 License - https://ultralytics.com/license
-
-# COCO 2017 dataset https://cocodataset.org by Microsoft
-# Documentation: https://docs.ultralytics.com/datasets/detect/coco/
-# Example usage: yolo train data=coco.yaml
-# parent
-# ├── ultralytics
-# └── datasets
-#     └── coco  ← downloads here (20.1 GB)
-
-# Train/val/test sets as 1) dir: path/to/imgs, 2) file: path/to/imgs.txt, or 3) list: [path/to/imgs1, path/to/imgs2, ..]
-path: ..datasets/coco # dataset root dir
-train: train2017.txt # train images (relative to 'path') 118287 images
-val: val2017.txt # val images (relative to 'path') 5000 images
-test: test-dev2017.txt # 20288 of 40670 images, submit to https://competitions.codalab.org/competitions/20794
-
-# Classes
-names:
-  0: person
-  1: bicycle
-  2: car
-  3: motorcycle
-  4: airplane
-  5: bus
-  6: train
-  7: truck
-  8: boat
-  9: traffic light
-  10: fire hydrant
-  11: stop sign
-  12: parking meter
-  13: bench
-  14: bird
-  15: cat
-  16: dog
-  17: horse
-  18: sheep
-  19: cow
-  20: elephant
-  21: bear
-  22: zebra
-  23: giraffe
-  24: backpack
-  25: umbrella
-  26: handbag
-  27: tie
-  28: suitcase
-  29: frisbee
-  30: skis
-  31: snowboard
-  32: sports ball
-  33: kite
-  34: baseball bat
-  35: baseball glove
-  36: skateboard
-  37: surfboard
-  38: tennis racket
-  39: bottle
-  40: wine glass
-  41: cup
-  42: fork
-  43: knife
-  44: spoon
-  45: bowl
-  46: banana
-  47: apple
-  48: sandwich
-  49: orange
-  50: broccoli
-  51: carrot
-  52: hot dog
-  53: pizza
-  54: donut
-  55: cake
-  56: chair
-  57: couch
-  58: potted plant
-  59: bed
-  60: dining table
-  61: toilet
-  62: tv
-  63: laptop
-  64: mouse
-  65: remote
-  66: keyboard
-  67: cell phone
-  68: microwave
-  69: oven
-  70: toaster
-  71: sink
-  72: refrigerator
-  73: book
-  74: clock
-  75: vase
-  76: scissors
-  77: teddy bear
-  78: hair drier
-  79: toothbrush
-
-# Download script/URL (optional)
-download: |
-  from ultralytics.utils.downloads import download
-  from pathlib import Path
-
-  # Download labels
-  segments = True  # segment or box labels
-  dir = Path(yaml['path'])  # dataset root dir
-  url = 'https://github.com/ultralytics/assets/releases/download/v0.0.0/'
-  urls = [url + ('coco2017labels-segments.zip' if segments else 'coco2017labels.zip')]  # labels
-  download(urls, dir=dir.parent)
-  # Download data
-  urls = ['http://images.cocodataset.org/zips/train2017.zip',  # 19G, 118k images
-          'http://images.cocodataset.org/zips/val2017.zip',  # 1G, 5k images
-          'http://images.cocodataset.org/zips/test2017.zip']  # 7G, 41k images (optional)
-  download(urls, dir=dir / 'images', threads=3)

+ 24 - 0
ultralytics/cfg/datasets/yolov13.yaml

@@ -0,0 +1,24 @@
+# Ultralytics 🚀 AGPL-3.0 License - https://ultralytics.com/license
+
+# COCO 2017 dataset https://cocodataset.org by Microsoft
+# Documentation: https://docs.ultralytics.com/datasets/detect/coco/
+# Example usage: yolo train data=coco.yaml
+# parent
+# ├── ultralytics
+# └── datasets
+#     └── coco  ← downloads here (20.1 GB)
+
+# Train/val/test sets as 1) dir: path/to/imgs, 2) file: path/to/imgs.txt, or 3) list: [path/to/imgs1, path/to/imgs2, ..]
+path: D:\ultralytics-main\ultralytics-main\datasets_merged  # 数据集根目录
+
+train: images/train  # 训练集图片文件夹(相对于path)
+val: images/val      # 验证集图片文件夹(相对于path)
+test: images/test    # 测试集图片文件夹(相对于path)
+
+# Classes
+names:
+  0: fire
+  1: dust
+  2: move_machine
+  3: open_machine
+  4: close_machine

+ 1 - 1
ultralytics/cfg/models/v13/yolov13.yaml

@@ -1,4 +1,4 @@
-nc: 80 # number of classes
+nc: 5 # number of classes
 scales: # model compound scaling constants, i.e. 'model=yolov13n.yaml' will call yolov13.yaml with scale 'n'
   # [depth, width, max_channels]
   n: [0.50, 0.25, 1024]   # Nano

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