Multi-Temporal Convolutions for Human Action Recognition in Videos
Publication date
2021-07-18
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taverne
Abstract
Effective extraction of temporal patterns is crucial for the recognition of temporally varying actions in video. We argue that the fixed-sized spatio-temporal convolution kernels used in convolutional neural networks (CNNs) can be improved to extract informative motions that are executed at different time scales. To address this challenge, we present a novel convolution block that is capable of extracting spatio-temporal patterns at multiple temporal resolutions. Our proposed multi-temporal convolution (MTConv) blocks utilize two branches that focus on brief and prolonged spatio-temporal patterns, respectively. The extracted time-varying features are aligned in a third branch, with respect to global motion patterns through recurrent cells. The proposed blocks are lightweight and can be integrated into any 3D-CNN architecture. This introduces a substantial reduction in computational costs. Extensive experiments on Kinetics, Moments in Time and HACS action recognition benchmark datasets demonstrate competitive performance of MTConvs compared to the state-of-the-art with a significantly lower computational footprint 11Our code is available at: https://git.io/JfuPi.
Keywords
Convolution, Computational modeling, Neural networks, Benchmark testing, X3D, Streaming media, Feature extraction, Taverne
Citation
Stergiou, A & Poppe, R 2021, Multi-Temporal Convolutions for Human Action Recognition in Videos. in IJCNN 2021 - International Joint Conference on Neural Networks, Proceedings. IEEE, pp. 1-9. https://doi.org/10.1109/IJCNN52387.2021.9533515