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D3TW: Discriminative Differentiable Dynamic Time Warping for Weakly Supervised Action Alignment and Segmentation

About

We address weakly supervised action alignment and segmentation in videos, where only the order of occurring actions is available during training. We propose Discriminative Differentiable Dynamic Time Warping (D3TW), the first discriminative model using weak ordering supervision. The key technical challenge for discriminative modeling with weak supervision is that the loss function of the ordering supervision is usually formulated using dynamic programming and is thus not differentiable. We address this challenge with a continuous relaxation of the min-operator in dynamic programming and extend the alignment loss to be differentiable. The proposed D3TW innovatively solves sequence alignment with discriminative modeling and end-to-end training, which substantially improves the performance in weakly supervised action alignment and segmentation tasks. We show that our model is able to bypass the degenerated sequence problem usually encountered in previous work and outperform the current state-of-the-art across three evaluation metrics in two challenging datasets.

Chien-Yi Chang, De-An Huang, Yanan Sui, Li Fei-Fei, Juan Carlos Niebles• 2019

Related benchmarks

TaskDatasetResultRank
Temporal action segmentationBreakfast
Accuracy45.7
96
Action SegmentationBreakfast
MoF45.7
66
Action SegmentationBreakfast (test)
MoF45.7
31
Action SegmentationBreakfast 14
MoF45.7
26
Action AlignmentBreakfast
IoD56.3
18
Action AlignmentHollywood Extended
IoD50.9
15
Temporal Video SegmentationBreakfast
MoF0.457
14
Action AlignmentHollywood Extended (test)
IoD50.9
12
Fine-grained Action RecognitionFineGym101
Accuracy38.21
12
Fine-grained Action RecognitionFineGym290
Accuracy34.04
12
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