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Terrain Classification for Autonomous Vehicles Using Bat-Inspired Echolocation

机译:使用BAT激发回声机的自治车辆地形分类

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Many types of bats use echolocation to sense their environment. Despite often have little or no visual acuity, they are able to acquire very detailed views of their surroundings through emission, receipt, and analysis of acoustic pulses. In this study autonomous navigation was examined with respect to classification of nearby terrain. The goal of this effort was to demonstrate that a bat-inspired acoustic sensor could be built, and when trained using advanced signal filtering and machine learning techniques, could be used to accurately classify terrain types for a small mobile robot. A dual channel in-air sonar was constructed using two common piezoelectric transmitter elements with 25 kHz and 32 kHz nominal center frequencies, and echo data was collected from grass, concrete, sand, and gravel terrain substrates. Higher dimension time, frequency, and time-frequency PCA scores were used to discriminate between terrain substrates. These features were used to train a support vector machine (SVM) to classify the terrain types. The SVM-based classifier was able to classify terrain types at a greater than 97% success rate using the constructed bat-inspired echolocation sensor.
机译:许多类型的蝙蝠使用Echolocation来感知他们的环境。尽管经常有很少或没有视力,但它们能够通过发射,收据和声学脉冲的分析获取周围环境的非常详细的视图。在这项研究中,关于附近地形的分类,检查了自主导航。这项努力的目标是证明可以构建蝙蝠启发的声学传感器,并且在使用先进的信号过滤和机器学习技术训练时,可用于准确地对一个小型移动机器人进行地形类型。使用两个具有25 kHz和32kHz标称中心频率的普通压电发射器元件构建了双通道内轨道,并从草,混凝土,沙子和砾石地形衬底收集回声数据。尺寸时间,频率和时频PCA分数较高用于区分地形基板。这些功能用于训练支持向量机(SVM)来分类地形类型。基于SVM的分类器能够使用所构造的BAT激发的回声机传感器以大于97%的成功率对地形类型进行分类。

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