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@@ -58,7 +58,7 @@
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* **State-of-the-Art Performance**
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* Demonstrates significant mAP gains of YOLOv13-S over YOLOv12-S and earlier versions on the MS COCO benchmark.
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- * Maintains a lightweight model size, ideal for mobile and embedded deployment. Specifically, The FLOPs of Nano and Small are the lowest among the YOLO series.
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+ * Maintains a lightweight model size, ideal for mobile and embedded deployment. Specifically, The FLOPs of Nano and Small models are the lowest among the YOLO series.
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> YOLOv13 seamlessly combines hypergraph computation with end-to-end information collaboration to deliver a more accurate, robust, and efficient real-time detection solution.
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