Class Feature Pyramids for Video Explanation

Publication date

2019

Authors

Stergiou, A.G.ISNI 0000000492926360
Kapidis, G.ISNI 0000000523924174
Kalliatakis, Grigorios
Chrysoulas, Christos
Poppe, R.W.ISNI 0000000389426288
Veltkamp, R.C.ISNI 0000000109665680

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

Deep convolutional networks are widely used in video action recognition. 3D convolutions are one prominent approach to deal with the additional time dimension. While 3D convolutions typically lead to higher accuracies, the inner workings of the trained models are more difficult to interpret. We focus on creating human-understandable visual explanations that represent the hierarchical parts of spatio-temporal networks. We introduce Class Feature Pyramids, a method that traverses the entire network structure and incrementally discovers kernels at different network depths that are informative for a specific class. Our method does not depend on the network's architecture or the type of 3D convolutions, supporting grouped and depth-wise convolutions, convolutions in fibers, and convolutions in branches. We demonstrate the method on six state-of-the-art 3D convolution neural networks (CNNs) on three action recognition (Kinetics-400, UCF-101, and HMDB-51) and two egocentric action recognition datasets (EPIC-Kitchens and EGTEA Gaze+).

Keywords

Visual Explanations, Explainable Convolutions, Spatio-temporal feature representation, Feature extraction, Kernel, Visualization, Convolutional codes, Three-dimensional displays, Biological neural networks, Complexity theory, Taverne

Citation

Stergiou, A G, Kapidis, G, Kalliatakis, G, Chrysoulas, C, Poppe, R W & Veltkamp, R C 2019, Class Feature Pyramids for Video Explanation. in Proceedings of the IEEE/CVF International Conference on Computer Vision Workshop (ICCVW). IEEE, pp. 4255-4264, IEEE International Conference on Computer Vision Workshops 2019, Seoul, Korea, Republic of, 27/10/19. https://doi.org/10.1109/ICCVW.2019.00524, workshop