Blockwise Temporal-Spatial Pathway Network
- URL: http://arxiv.org/abs/2208.03040v1
- Date: Fri, 5 Aug 2022 08:43:30 GMT
- Title: Blockwise Temporal-Spatial Pathway Network
- Authors: SeulGi Hong, Min-Kook Choi
- Abstract summary: We propose a 3D-CNN-based action recognition model, called the blockwise temporal-spatial path-way network (BTSNet)
We designed a novel model inspired by an adaptive kernel selection-based model, which adaptively chooses spatial receptive fields for image recognition.
For evaluation, we tested our proposed model on UCF-101, HMDB-51, SVW, and EpicKitchen datasets.
- Score: 0.2538209532048866
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Algorithms for video action recognition should consider not only spatial
information but also temporal relations, which remains challenging. We propose
a 3D-CNN-based action recognition model, called the blockwise temporal-spatial
path-way network (BTSNet), which can adjust the temporal and spatial receptive
fields by multiple pathways. We designed a novel model inspired by an adaptive
kernel selection-based model, which is an architecture for effective feature
encoding that adaptively chooses spatial receptive fields for image
recognition. Expanding this approach to the temporal domain, our model extracts
temporal and channel-wise attention and fuses information on various candidate
operations. For evaluation, we tested our proposed model on UCF-101, HMDB-51,
SVW, and Epic-Kitchen datasets and showed that it generalized well without
pretraining. BTSNet also provides interpretable visualization based on
spatiotemporal channel-wise attention. We confirm that the blockwise
temporal-spatial pathway supports a better representation for 3D convolutional
blocks based on this visualization.
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