PP-YOLOE: An evolved version of YOLO
PP-YOLOE: An evolved version of YOLO
In this report, we present PP-YOLOE, an industrial state-of-the-art object detector with high performance and friendly deployment. We optimize on the basis of the previous PP-YOLOv2, using anchor-free paradigm, more powerful backbone and neck equipped with CSPRepResStage, ET-head and dynamic label assignment algorithm TAL. We provide s/m/l/x models for different practice scenarios. As a result, PP-YOLOE-l achieves 51.4 mAP on COCO test-dev and 78.1 FPS on Tesla V100, yielding a remarkable improvement of (+1.9 AP, +13.35% speed up) and (+1.3 AP, +24.96% speed up), compared to the previous state-of-the-art industrial models PP-YOLOv2 and YOLOX respectively. Further, PP-YOLOE inference speed achieves 149.2 FPS with TensorRT and FP16-precision. We also conduct extensive experiments to verify the effectiveness of our designs. Source code and pre-trained models are available at https://github.com/PaddlePaddle/PaddleDetection.
Xinxin Wang、Shengyu Wei、Shangliang Xu、Qinyao Chang、Wenyu Lv、Yuning Du、Kaipeng Deng、Baohua Lai、Cheng Cui、Qingqing Dang、Guanzhong Wang
计算技术、计算机技术
Xinxin Wang,Shengyu Wei,Shangliang Xu,Qinyao Chang,Wenyu Lv,Yuning Du,Kaipeng Deng,Baohua Lai,Cheng Cui,Qingqing Dang,Guanzhong Wang.PP-YOLOE: An evolved version of YOLO[EB/OL].(2022-03-30)[2025-05-18].https://arxiv.org/abs/2203.16250.点此复制
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