Recurrent attentional reinforcement learning for multi-label image recognition

T Chen, Z Wang, G Li, L Lin - Proceedings of the AAAI conference on …, 2018 - ojs.aaai.org
Proceedings of the AAAI conference on artificial intelligence, 2018ojs.aaai.org
Recognizing multiple labels of images is a fundamental but challenging task in computer
vision, and remarkable progress has been attained by localizing semantic-aware image
regions and predicting their labels with deep convolutional neural networks. The step of
hypothesis regions (region proposals) localization in these existing multi-label image
recognition pipelines, however, usually takes redundant computation cost, eg, generating
hundreds of meaningless proposals with non-discriminative information and extracting their …
Abstract
Recognizing multiple labels of images is a fundamental but challenging task in computer vision, and remarkable progress has been attained by localizing semantic-aware image regions and predicting their labels with deep convolutional neural networks. The step of hypothesis regions (region proposals) localization in these existing multi-label image recognition pipelines, however, usually takes redundant computation cost, eg, generating hundreds of meaningless proposals with non-discriminative information and extracting their features, and the spatial contextual dependency modeling among the localized regions are often ignored or over-simplified. To resolve these issues, this paper proposes a recurrent attention reinforcement learning framework to iteratively discover a sequence of attentional and informative regions that are related to different semantic objects and further predict label scores conditioned on these regions. Besides, our method explicitly models long-term dependencies among these attentional regions that help to capture semantic label co-occurrence and thus facilitate multi-label recognition. Extensive experiments and comparisons on two large-scale benchmarks (ie, PASCAL VOC and MS-COCO) show that our model achieves superior performance over existing state-of-the-art methods in both performance and efficiency as well as explicitly identifying image-level semantic labels to specific object regions.
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