Temporal Convolution Based Action Proposal: Submission to ActivityNet 2017
About
In this notebook paper, we describe our approach in the submission to the temporal action proposal (task 3) and temporal action localization (task 4) of ActivityNet Challenge hosted at CVPR 2017. Since the accuracy in action classification task is already very high (nearly 90% in ActivityNet dataset), we believe that the main bottleneck for temporal action localization is the quality of action proposals. Therefore, we mainly focus on the temporal action proposal task and propose a new proposal model based on temporal convolutional network. Our approach achieves the state-of-the-art performances on both temporal action proposal task and temporal action localization task.
Tianwei Lin, Xu Zhao, Zheng Shou• 2017
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Temporal Action Detection | ActivityNet v1.3 (val) | mAP@0.544.39 | 185 | |
| Temporal Action Proposal | ActivityNet v1.3 (val) | AUC64.4 | 114 | |
| Temporal Action Detection | ActivityNet 1.3 (test) | Average mAP32.26 | 80 | |
| Temporal Action Proposal Generation | ActivityNet 1.3 (test) | AUC64.8 | 62 | |
| Temporal Action Detection | ActivityNet (val) | mAP29.17 | 16 | |
| Temporal Action Proposal | ActivityNet (val) | AR@10073.01 | 6 | |
| Temporal Action Localization | ActivityNet (test) | Average mAP32.26 | 4 |
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