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Image processing and behavior planning for robot-rat interaction

机译:机器人与老鼠互动的图像处理和行为计划

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摘要

In this paper, we proposed an automated video processing system to replace the traditional manual annotation, and to improve the adaptivity of the rat-like robot to autonomously interact with rats. The feature parameters of rats, such as body length, body area, circularity, body bend angle, locomotion speed, etc., are extracted based on image processing. These parameters are integrated as the input feature vector of Artificial Neural Network (ANN) and Support Vector Machine (SVM) classification methods respectively. Preliminary experiments reveal that the rearing, grooming and rotating actions could be recognized with extremely high rate (more than 90% by SVM and more than 80% by ANN). Furthermore, SVM needs less training computational cost than ANN. Therefore, SVM is superior to ANN for the behavior recognition of rats. By using the SVM-based recognition system, the behavior of the robot is generated adaptive to the rat behavior for different interactions.
机译:在本文中,我们提出了一种自动化的视频处理系统,以取代传统的手动注释,并提高类鼠机器人自主地与鼠类互动的适应性。基于图像处理来提取大鼠的特征参数,例如体长,体面积,圆度,体弯角,运动速度等。这些参数分别集成为人工神经网络(ANN)和支持向量机(SVM)分类方法的输入特征向量。初步实验表明,可以以极高的比率(SVM超过90%,ANN超过80%)识别出抬起,修饰和旋转动作。此外,与ANN相比,SVM需要更少的训练计算成本。因此,对于大鼠的行为识别,SVM优于ANN。通过使用基于SVM的识别系统,可以针对不同的交互情况,针对老鼠的行为自适应地生成机器人的行为。

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