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Code and model for the AI City Challenge (CVPR 2022) Track 3 Action Detection (Naturalistic Driving Action Recognition)
Dataset, code and model for the CVPR'20 paper "The Garden of Forking Paths: Towards Multi-Future Trajectory Prediction". And for the ECCV'20 SimAug paper.
Out-of-the-box code and models for CMU's object detection and tracking system for multi-camera surveillance videos. Speed optimized Faster-RCNN model. Tensorflow based. Also supports EfficientDet. …
Code and model for "Peeking into the Future: Predicting Future Person Activities and Locations in Videos", Liang et al, CVPR 2019
Real-world photo sequence question answering system (MemexQA). CVPR'18 and TPAMI'19
Code and model for the Video Event Reconstruction and Analysis (VERA) system. ACM Multimedia.
Thanks for sharing the work. Just curious: how does the compare to a recent MViTv2 work in terms of FLOPs/accuracy trade-off?
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