Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Coarse to Fine Multi-Resolution Temporal Convolutional Network

About

Temporal convolutional networks (TCNs) are a commonly used architecture for temporal video segmentation. TCNs however, tend to suffer from over-segmentation errors and require additional refinement modules to ensure smoothness and temporal coherency. In this work, we propose a novel temporal encoder-decoder to tackle the problem of sequence fragmentation. In particular, the decoder follows a coarse-to-fine structure with an implicit ensemble of multiple temporal resolutions. The ensembling produces smoother segmentations that are more accurate and better-calibrated, bypassing the need for additional refinement modules. In addition, we enhance our training with a multi-resolution feature-augmentation strategy to promote robustness to varying temporal resolutions. Finally, to support our architecture and encourage further sequence coherency, we propose an action loss that penalizes misclassifications at the video level. Experiments show that our stand-alone architecture, together with our novel feature-augmentation strategy and new loss, outperforms the state-of-the-art on three temporal video segmentation benchmarks.

Dipika Singhania, Rahul Rahaman, Angela Yao• 2021

Related benchmarks

TaskDatasetResultRank
Action Segmentation50Salads
Edit Distance69.2
114
Action SegmentationBreakfast
F1@1076.3
107
Action SegmentationGTEA
F1@10%90.3
39
Action SegmentationGTEA
F1@1090.3
23
Action SegmentationGTEA (full)
Edit Score87.3
16
Action RecognitionBreakfast (1357:335)
Accuracy94.9
13
Action Segmentation50Salads
F1@100.843
8
Action SegmentationGTEA
F1@10%90.3
7
Action SegmentationAssembly101 (test)
F1@1033.3
5
Showing 9 of 9 rows

Other info

Follow for update