![]() ![]() We ran all speed tests on Google Colab Pro notebooks for easy reproducibility. We exported all models to ONNX FP32 for CPU speed tests and to TensorRT FP16 for GPU speed tests. ![]() ![]() We trained YOLOv5 segmentations models on COCO for 300 epochs at image size 640 using A100 GPUs. ( #10027 by Comet Logging and Visualization Integration: Free forever, Comet lets you save YOLOv5 models, resume training, and interactively visualise and debug predictions. This reduces risk in caching and should help improve adoption of the dataset caching feature, which can significantly speed up training. Segmentation Models ⭐ NEW: SOTA YOLOv5-seg COCO-pretrained segmentation models are now available for the first time ( #9052 by and Paddle Paddle Export: Export any YOLOv5 model (cls, seg, det) to Paddle format with python export.py -include paddle ( #9459 by YOLOv5 AutoCache: Use python train.py -cache ram will now scan available memory and compare against predicted dataset RAM usage.This release incorporates 280 PRs from 41 contributors since our last release in August 2022. We'd love your feedback and contributions on this effort! The new v7.0 YOLOv5-seg models below are just a start, we will continue to improve these going forward together with our existing detection and classification models. Our primary goal with this release is to introduce super simple YOLOv5 segmentation workflows just like our existing object detection models. ![]()
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