3.8 Proceedings Paper

Sound Identification for Fire-Fighting Mobile Robots

Publisher

IEEE
DOI: 10.1109/IRC.2018.00020

Keywords

Audio classification; neural networks; search robots; unstructured terrain

Funding

  1. NSF [1560337]
  2. Div Of Engineering Education and Centers
  3. Directorate For Engineering [1560337] Funding Source: National Science Foundation

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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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