消防移动机器人的声音识别

Eli M. Baum, Mario Harper, Ryan Alicea, Camilo Ordonez
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引用次数: 16

摘要

被火焰吞没的建筑物会给消防人员和被困在里面的人带来极大的危险。一个辅助消防员的同伴机器人可能有助于加快对人类的搜索,同时降低消防员的风险。然而,在这些环境中操作的机器人需要能够在能见度非常低的条件下操作,因为浓烟、碎片和非结构化地形。本文开发了一种音频分类算法,用于识别与消防相关的声音,如遇险人员(婴儿哭声、尖叫声、咳嗽声)、结构损坏(木材断裂、玻璃破碎)、火灾、消防车和人群。然后,分类器的输出用作消防员的警报,或修改能够在非结构化地形中导航的机器人的配置。该方法从音频记录中提取一系列特征,并使用单个隐藏层,前馈神经网络进行分类。网络结构的简单性使其能够在有限的硬件上实现性能,并获得总体准确率为85.7%的分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sound Identification for Fire-Fighting Mobile Robots
A structure engulfed in flames can pose an extreme danger for fire-fighting personnel as well as any people trapped inside. A companion robot to assist the fire-fighters could potentially help speed up the search for humans while reducing risk for the fire-fighters. However, robots operating in these environments need to be able to operate in very low visibility conditions because of the heavy smoke, debris and unstructured terrain. This paper develops an audio classification algorithm to identify sounds relevant to fire-fighting such as people in distress (baby cries, screams, coughs), structural failure (wood snapping, glass breaking), fire, fire trucks, and crowds. The outputs of the classifier are then used as alerts for the fire-fighter or to modify the configuration of a robot capable of navigating unstructured terrain. The approach used extracts an array of features from audio recordings and employs a single hidden layer, feed forward neural network for classification. The simplicity in network structure enables performance on limited hardware and obtains classification results with an overall accuracy of 85.7%.
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