A Self-Supervised Method for Body Part Segmentation and Keypoint Detection of Rat Images
Recognition of individual components and keypoint detection supported by instance segmentation is crucial to analyze the behavior of agents on the scene. Such systems could be used for surveillance, self-driving cars, and also for medical research, where behavior analysis of laboratory animals is us...
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Zusammenfassung: | Recognition of individual components and keypoint detection supported by
instance segmentation is crucial to analyze the behavior of agents on the
scene. Such systems could be used for surveillance, self-driving cars, and also
for medical research, where behavior analysis of laboratory animals is used to
confirm the aftereffects of a given medicine. A method capable of solving the
aforementioned tasks usually requires a large amount of high-quality
hand-annotated data, which takes time and money to produce. In this paper, we
propose a method that alleviates the need for manual labeling of laboratory
rats. To do so, first, we generate initial annotations with a computer
vision-based approach, then through extensive augmentation, we train a deep
neural network on the generated data. The final system is capable of instance
segmentation, keypoint detection, and body part segmentation even when the
objects are heavily occluded. |
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DOI: | 10.48550/arxiv.2405.04650 |