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An automated behavior analysis system for freely moving rodents using depth image

机译:一种自动行为分析系统,用于使用深度图像自由移动啮齿动物

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摘要

A rodent behavior analysis system is presented, capable of automated tracking, pose estimation, and recognition of nine behaviors in freely moving animals. The system tracks three key points on the rodent body (nose, center of body, and base of tail) to estimate its pose and head rotation angle in real time. A support vector machine (SVM)-based model, including label optimization steps, is trained to classify on a frame-by-frame basis: resting, walking, bending, grooming, sniffing, rearing supported, rearing unsupported, micro-movements, and other behaviors. Compared to conventional red-green-blue (RGB) camera-based methods, the proposed system operates on 3D depth images provided by the Kinect infrared (IR) camera, enabling stable performance regardless of lighting conditions and animal color contrast with the background. This is particularly beneficial for monitoring nocturnal animals' behavior. 3D features are designed to be extracted directly from the depth stream and combined with contour-based 2D features to further improve recognition accuracies. The system is validated on three freely behaving rats for 168min in total. The behavior recognition model achieved a cross-validation accuracy of 86.8% on the rat used for training and accuracies of 82.1 and 83% on the other two testing rats. The automated head angle estimation aided by behavior recognition resulted in 0.76 correlation with human expert annotation.
机译:提出了一种啮齿动物行为分析系统,能够在自动跟踪,姿势估计和自由移动动物中识别九种行为的识别。该系统跟踪啮齿动物体(鼻子,身体中心和尾部的鼻子)上的三个关键点,以实时估计其姿势和头部旋转角度。基于标签优化步骤的支持向量机(SVM)的模型,以逐帧进行分类:休息,行走,弯曲,修饰,嗅探,饲养,饲养,饲养不受支持,微观运动,和其他行为。与传统的红绿蓝(RGB)基于相机的方法相比,所提出的系统在通过Kinect红外线(IR)相机提供的3D深度图像上运行,无论与背景的照明条件和动物颜色对比如何,都能稳定的性能。这对于监测夜间动物的行为特别有益。 3D功能设计为直接从深度流中提取,并与基于轮廓的2D特征组合,以进一步提高识别精度。该系统总共三只可自由行为大鼠验证,总共168分钟。该行为识别模型在其他两只测试大鼠上实现了用于训练和准确性的大鼠的交叉验证精度为86.8%。通过行为识别辅助的自动头角度估计导致与人类专家注释相关0.76。

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