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Real-Time Cattle Interaction Recognition via Triple-stream Network
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- Yang Yang
- Kobe University,Graduate School of System Informatics,Kobe,Japan
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- Mizuka Komatsu
- Kobe University,Graduate School of System Informatics,Kobe,Japan
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- Takenao Ohkawa
- Kobe University,Graduate School of System Informatics,Kobe,Japan
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- Kenji Oyama
- Kobe University,Graduate School of Agricultural Science,Kobe,Japan
Description
In stockbreeding of beef cattle, computer vision-based approaches have been widely employed to monitor cattle conditions (e.g. the physical, physiology, and health). To this end, the accurate and effective recognition of cattle action is a prerequisite. Generally, most existing models are confined to individual behavior that uses video-based methods to extract spatial-temporal features for recognizing the individual actions of each cattle. However, there is sociality among cattle and their interaction usually reflects important conditions, e.g. estrus, and also video-based method neglects the real-time capability of the model. Based on this, we tackle the challenging task of real-time recognizing interactions between cattle in a single frame in this paper. The pipeline of our method includes two main modules: Cattle Localization Network and Interaction Recognition Network. At every moment, cattle localization network outputs high-quality interaction proposals from every detected cattle and feeds them into the interaction recognition network with a triple-stream architecture. Such a triple-stream network allows us to fuse different features relevant to recognizing interactions. Specifically, the three kinds of features are a visual feature that extracts the appearance representation of interaction proposals, a geometric feature that reflects the spatial relationship between cattle, and a semantic feature that captures our prior knowledge of the relationship between the individual action and interaction of cattle. In addition, to solve the problem of insufficient quantity of labeled data, we pre-train the model based on self-supervised learning. Qualitative and quantitative evaluation evidences the performance of our framework as an effective method to recognize cattle interaction in real time.
Accepted in ICMLA2022
Journal
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- 2022 21st IEEE International Conference on Machine Learning and Applications (ICMLA)
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2022 21st IEEE International Conference on Machine Learning and Applications (ICMLA) 61-68, 2022-12
IEEE
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Keywords
Details 詳細情報について
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- CRID
- 1360865816802992896
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- Article Type
- journal article
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- Data Source
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- Crossref
- KAKEN
- OpenAIRE