Saliency Tubes: Visual Explanations for Spatio-Temporal Convolutions

Publication date

2019

Authors

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

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

taverne

Abstract

Deep learning approaches have been established as the main methodology for video classification and recognition. Recently, 3-dimensional convolutions have been used to achieve state-of-the-art performance in many challenging video datasets. Because of the high level of complexity of these methods, as the convolution operations are also extended to an additional dimension in order to extract features from it as well, providing a visualization for the signals that the network interpret as informative, is a challenging task. An effective notion of understanding the network’s innerworkings would be to isolate the spatio-temporal regions on the video that the network finds most informative. We propose a method called Saliency Tubes which demonstrate the foremost points and regions in both frame level and over time that are found to be the main focus points of the network. We demonstrate our findings on widely used datasets for thirdperson and egocentric action classification and enhance the set of methods and visualizations that improve 3D Convolutional Neural Networks (CNNs) intelligibility.

Keywords

Visual Explanations, Explainable Convolutions, Spatio-temporal feature representation, Taverne

Citation

Stergiou, A G, Kapidis, G, Kalliatakis, G, Chrysoulas, C, Veltkamp, R C & Poppe, R W 2019, Saliency Tubes: Visual Explanations for Spatio-Temporal Convolutions. in Proceedings of the IEEE International Conference on Image Processing (ICIP). IEEE, pp. 1830-1834, International Conference on Image Processing 2019, Taipei, Taiwan, Province of China, 22/09/19. https://doi.org/10.1109/ICIP.2019.8803153, conference