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Identification of Rat Ultrasonic Vocalizations from Mix Sounds of a Robotic Rat in a Noisy Environment

机译:噪声环境中机器人大鼠混合声音识别大鼠超声声

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Social interaction between a robot and rats is important since the robot can generate reproducible social behaviors across trials. However, lacking internal state feedback from the rat makes current robot-rat interaction a very preliminary level comparing with rat-rat interaction. Previous biological studies showed that ultrasonic vocalizations (USVs) emitted by a rat are expressions of its internal emotional states, which therefore can be used as part of feedback for a robot-rat interaction. The challenge is to accurately identify rat USVs in real-time from mix sounds generated by the robot in a noisy environment. To address these problems, we propose an SVM-based rat USVs identification method. This SVM method uses three types of features to represents the characteristics of mix sound and use these multidimensional features to identify rat USVs. Results show that our identification method has an accuracy of 84.29% with only 4.84% false-positive rate. Furthermore, we carefully design the filter window length with respect to sound chunk length and use only one microphone to record the mix sound. All of these efforts are to reduce the calculation time to realize real-time identification. Eventually, the identification process can be executed within 3. 5ms, which definitely meet the real-time demand. This research lays the foundation of the feedback based interaction between rat and robot, and also shows promise in the study of ethology and the interaction between robot and animals.
机译:机器人和大鼠之间的社交互动是重要的,因为机器人可以在跨试验中产生可重复的社会行为。然而,缺乏来自大鼠的内部状态反馈使当前的机器人 - 大鼠相互作用与大鼠大鼠相互作用相比非常初步水平。之前的生物学研究表明,大鼠发出的超声声(USV)是其内部情绪状态的表达,因此可以用作机器人 - 大鼠相互作用的反馈的一部分。挑战是在嘈杂的环境中实时准确地识别大鼠USVs,从机器人产生的混合声音。为了解决这些问题,我们提出了一种基于SVM的大鼠USVS识别方法。该SVM方法使用三种类型的功能来表示混合声音的特性,并使用这些多维功能来识别RAT USV。结果表明,我们的识别方法的准确性为84.29%,误率仅为4.84%。此外,我们仔细地设计了滤波器窗口长度,相对于声音块长度,只使用一个麦克风来记录混音声音。所有这些努力都要减少实现实时识别的计算时间。最终,识别过程可以在3. 5ms内执行,肯定会满足实时需求。该研究奠定了基于反馈基于反馈大鼠和机器人的互动的基础,并且还显示了道德学研究的承诺和机器人与动物之间的相互作用。

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