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Hailo Models

Here, we give the full list of models trained in-house for specific use-cases. Each model is accompanied with its own README, retraining docker and retraining guide. The compiled models listed here target Hailo-10H; for Hailo-8, switch to the relevant branch HAILO_MODELS.rst.

Important: Retraining is not available inside the docker version of Hailo Software Suite. In case you use it, clone the hailo_model_zoo outside of the docker, and perform the retraining there: git clone https://github.com/hailo-ai/hailo_model_zoo.git

  1. Object Detection
Network Name mAP* Input Resolution (HxWxC) Params (M) FLOPs (G)
yolov5m_vehicles 46.5 640x640x3 21.47 25.63
tiny_yolov4_license_plates 73.45 416x416x3 5.87 3.4
yolov5s_personface 47.5 640x640x3 7.25 8.38
  1. License Plate Recognition
Network Name Accuracy* Input Resolution (HxWxC) Params (M) FLOPs (G)
lprnet 99.96 75x300x3 7.14 18.29

* Evaluated on internal dataset

  1. Person Re-ID
Network Name Accuracy* Input Resolution (HxWxC) Params (M) FLOPs (G)
repvgg_a0_person_reid_512 89.9 256x128x3 7.68 0.89
repvgg_a0_person_reid_2048 90.02 256x128x3 9.65 0.89

* Evaluated on Market-1501