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Papers/MS-TCN++: Multi-Stage Temporal Convolutional Network for A...

MS-TCN++: Multi-Stage Temporal Convolutional Network for Action Segmentation

Shijie Li, Yazan Abu Farha, Yun Liu, Ming-Ming Cheng, Juergen Gall

2020-06-16Action SegmentationTemporal Action SegmentationSegmentation
PaperPDFCode

Abstract

With the success of deep learning in classifying short trimmed videos, more attention has been focused on temporally segmenting and classifying activities in long untrimmed videos. State-of-the-art approaches for action segmentation utilize several layers of temporal convolution and temporal pooling. Despite the capabilities of these approaches in capturing temporal dependencies, their predictions suffer from over-segmentation errors. In this paper, we propose a multi-stage architecture for the temporal action segmentation task that overcomes the limitations of the previous approaches. The first stage generates an initial prediction that is refined by the next ones. In each stage we stack several layers of dilated temporal convolutions covering a large receptive field with few parameters. While this architecture already performs well, lower layers still suffer from a small receptive field. To address this limitation, we propose a dual dilated layer that combines both large and small receptive fields. We further decouple the design of the first stage from the refining stages to address the different requirements of these stages. Extensive evaluation shows the effectiveness of the proposed model in capturing long-range dependencies and recognizing action segments. Our models achieve state-of-the-art results on three datasets: 50Salads, Georgia Tech Egocentric Activities (GTEA), and the Breakfast dataset.

Results

TaskDatasetMetricValueModel
Action Localization50 SaladsAcc83.7MS-TCN++
Action Localization50 SaladsEdit74.3MS-TCN++
Action Localization50 SaladsF1@10%80.7MS-TCN++
Action Localization50 SaladsF1@25%78.5MS-TCN++
Action Localization50 SaladsF1@50%70.1MS-TCN++
Action Localization50 SaladsAcc82.2MS-TCN++(sh)
Action Localization50 SaladsEdit70.7MS-TCN++(sh)
Action Localization50 SaladsF1@10%78.7MS-TCN++(sh)
Action Localization50 SaladsF1@25%76.6MS-TCN++(sh)
Action Localization50 SaladsF1@50%68.3MS-TCN++(sh)
Action LocalizationAssembly101Edit30.7MS-TCN++
Action LocalizationAssembly101F1@10%31.6MS-TCN++
Action LocalizationAssembly101F1@25%27.8MS-TCN++
Action LocalizationAssembly101F1@50%20.6MS-TCN++
Action LocalizationAssembly101MoF37.1MS-TCN++
Action LocalizationGTEAAcc80.1MS-TCN++
Action LocalizationGTEAEdit83.5MS-TCN++
Action LocalizationGTEAF1@10%88.8MS-TCN++
Action LocalizationGTEAF1@25%85.7MS-TCN++
Action LocalizationGTEAF1@50%76MS-TCN++
Action LocalizationGTEAAcc79.7MS-TCN++(sh)
Action LocalizationGTEAEdit83MS-TCN++(sh)
Action LocalizationGTEAF1@10%88.2MS-TCN++(sh)
Action LocalizationGTEAF1@25%86.2MS-TCN++(sh)
Action LocalizationGTEAF1@50%75.9MS-TCN++(sh)
Action LocalizationBreakfastAcc67.6MS-TCN++ (I3D)
Action LocalizationBreakfastAverage F156.2MS-TCN++ (I3D)
Action LocalizationBreakfastEdit65.6MS-TCN++ (I3D)
Action LocalizationBreakfastF1@10%64.1MS-TCN++ (I3D)
Action LocalizationBreakfastF1@25%58.6MS-TCN++ (I3D)
Action LocalizationBreakfastF1@50%45.9MS-TCN++ (I3D)
Action LocalizationBreakfastAcc67.3MS-TCN++(I3D) (sh)
Action LocalizationBreakfastAverage F155.2MS-TCN++(I3D) (sh)
Action LocalizationBreakfastEdit64.9MS-TCN++(I3D) (sh)
Action LocalizationBreakfastF1@10%63.3MS-TCN++(I3D) (sh)
Action LocalizationBreakfastF1@25%57.7MS-TCN++(I3D) (sh)
Action LocalizationBreakfastF1@50%44.5MS-TCN++(I3D) (sh)
Action Segmentation50 SaladsAcc83.7MS-TCN++
Action Segmentation50 SaladsEdit74.3MS-TCN++
Action Segmentation50 SaladsF1@10%80.7MS-TCN++
Action Segmentation50 SaladsF1@25%78.5MS-TCN++
Action Segmentation50 SaladsF1@50%70.1MS-TCN++
Action Segmentation50 SaladsAcc82.2MS-TCN++(sh)
Action Segmentation50 SaladsEdit70.7MS-TCN++(sh)
Action Segmentation50 SaladsF1@10%78.7MS-TCN++(sh)
Action Segmentation50 SaladsF1@25%76.6MS-TCN++(sh)
Action Segmentation50 SaladsF1@50%68.3MS-TCN++(sh)
Action SegmentationAssembly101Edit30.7MS-TCN++
Action SegmentationAssembly101F1@10%31.6MS-TCN++
Action SegmentationAssembly101F1@25%27.8MS-TCN++
Action SegmentationAssembly101F1@50%20.6MS-TCN++
Action SegmentationAssembly101MoF37.1MS-TCN++
Action SegmentationGTEAAcc80.1MS-TCN++
Action SegmentationGTEAEdit83.5MS-TCN++
Action SegmentationGTEAF1@10%88.8MS-TCN++
Action SegmentationGTEAF1@25%85.7MS-TCN++
Action SegmentationGTEAF1@50%76MS-TCN++
Action SegmentationGTEAAcc79.7MS-TCN++(sh)
Action SegmentationGTEAEdit83MS-TCN++(sh)
Action SegmentationGTEAF1@10%88.2MS-TCN++(sh)
Action SegmentationGTEAF1@25%86.2MS-TCN++(sh)
Action SegmentationGTEAF1@50%75.9MS-TCN++(sh)
Action SegmentationBreakfastAcc67.6MS-TCN++ (I3D)
Action SegmentationBreakfastAverage F156.2MS-TCN++ (I3D)
Action SegmentationBreakfastEdit65.6MS-TCN++ (I3D)
Action SegmentationBreakfastF1@10%64.1MS-TCN++ (I3D)
Action SegmentationBreakfastF1@25%58.6MS-TCN++ (I3D)
Action SegmentationBreakfastF1@50%45.9MS-TCN++ (I3D)
Action SegmentationBreakfastAcc67.3MS-TCN++(I3D) (sh)
Action SegmentationBreakfastAverage F155.2MS-TCN++(I3D) (sh)
Action SegmentationBreakfastEdit64.9MS-TCN++(I3D) (sh)
Action SegmentationBreakfastF1@10%63.3MS-TCN++(I3D) (sh)
Action SegmentationBreakfastF1@25%57.7MS-TCN++(I3D) (sh)
Action SegmentationBreakfastF1@50%44.5MS-TCN++(I3D) (sh)

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