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Papers/Spatiotemporal Residual Networks for Video Action Recognit...

Spatiotemporal Residual Networks for Video Action Recognition

Christoph Feichtenhofer, Axel Pinz, Richard P. Wildes

2016-11-07NeurIPS 2016 12Action RecognitionAction Recognition In VideosTemporal Action Localization
PaperPDFCode(official)

Abstract

Two-stream Convolutional Networks (ConvNets) have shown strong performance for human action recognition in videos. Recently, Residual Networks (ResNets) have arisen as a new technique to train extremely deep architectures. In this paper, we introduce spatiotemporal ResNets as a combination of these two approaches. Our novel architecture generalizes ResNets for the spatiotemporal domain by introducing residual connections in two ways. First, we inject residual connections between the appearance and motion pathways of a two-stream architecture to allow spatiotemporal interaction between the two streams. Second, we transform pretrained image ConvNets into spatiotemporal networks by equipping these with learnable convolutional filters that are initialized as temporal residual connections and operate on adjacent feature maps in time. This approach slowly increases the spatiotemporal receptive field as the depth of the model increases and naturally integrates image ConvNet design principles. The whole model is trained end-to-end to allow hierarchical learning of complex spatiotemporal features. We evaluate our novel spatiotemporal ResNet using two widely used action recognition benchmarks where it exceeds the previous state-of-the-art.

Results

TaskDatasetMetricValueModel
Activity RecognitionHMDB-51Average accuracy of 3 splits70.3ST-ResNet + IDT
Activity RecognitionUCF1013-fold Accuracy94.6ST-ResNet + IDT
Action RecognitionHMDB-51Average accuracy of 3 splits70.3ST-ResNet + IDT
Action RecognitionUCF1013-fold Accuracy94.6ST-ResNet + IDT

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