2020
DOI: 10.3390/app10082811
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Fine-Grained Action Recognition by Motion Saliency and Mid-Level Patches

Abstract: Effective extraction of human body parts and operated objects participating in action is the key issue of fine-grained action recognition. However, most of the existing methods require intensive manual annotation to train the detectors of these interaction components. In this paper, we represent videos by mid-level patches to avoid the manual annotation, where each patch corresponds to an action-related interaction component. In order to capture mid-level patches more exactly and rapidly, candidate motion regi… Show more

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Cited by 8 publications
(1 citation statement)
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“…It deals with temporal dynamics in a sequence of frames. A paper, entitled 'Fine-Grained Action Recognition' by Fang Liu, Liang Zhao, Xiaochun Cheng, Qin Dai, and Xiangbin Shi, and Jianzhong Qiao [7], proposes an action recognition model using a graph structure to describe relationships between the mid-level patches.…”
Section: Detection and Classificationmentioning
confidence: 99%
“…It deals with temporal dynamics in a sequence of frames. A paper, entitled 'Fine-Grained Action Recognition' by Fang Liu, Liang Zhao, Xiaochun Cheng, Qin Dai, and Xiangbin Shi, and Jianzhong Qiao [7], proposes an action recognition model using a graph structure to describe relationships between the mid-level patches.…”
Section: Detection and Classificationmentioning
confidence: 99%