Weakly Supervised Action Localization by Sparse Temporal Pooling Network
Abstract
We propose a weakly supervised temporal action localization algorithm on untrimmed videos using convolutional neural networks. Our algorithm learns from video-level class labels and predicts temporal intervals of human actions with no requirement of temporal localization annotations. We design our network to identify a sparse subset of key segments associated with target actions in a video using an attention module and fuse the key segments through adaptive temporal pooling. Our loss function is comprised of two terms that minimize the video-level action classification error and enforce the sparsity of the segment selection. At inference time, we extract and score temporal proposals using temporal class activations and class-agnostic attentions to estimate the time intervals that correspond to target actions. The proposed algorithm attains state-of-the-art results on the THUMOS14 dataset and outstanding performance on ActivityNet1.3 even with its weak supervision.
Cite
@article{arxiv.1712.05080,
title = {Weakly Supervised Action Localization by Sparse Temporal Pooling Network},
author = {Phuc Nguyen and Ting Liu and Gautam Prasad and Bohyung Han},
journal= {arXiv preprint arXiv:1712.05080},
year = {2018}
}
Comments
Accepted to CVPR 2018