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A Monkey Swing Counting Algorithm Based on Object Detection

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arxiv 2303.06567 v1 pith:FWKK7B3F submitted 2023-03-12 cs.CV

A Monkey Swing Counting Algorithm Based on Object Detection

classification cs.CV
keywords monkeycountingdetectionalgorithmswingcountdeepfocuses
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper focuses on proposing a deep learning-based monkey swing counting algorithm. Nowadays, there are very few papers on monkey detection, and even fewer papers on monkey swing counting. This research focuses on this gap and attempts to count the number of monkeys swinging their heads by deep learning. This paper further extends the traditional target detection algorithm. By analyzing the results of object detection, we localize the monkey's actions over a period of time. This paper analyzes the task of counting monkey head swings, and proposes the standard that accurately describes a monkey swinging its head. Under the guidance of this standard, the head-swing count in 50 monkey movement videos in this paper has achieved 94%.

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