Sensor fusion for ecologically valid obstacle identification: Building a comprehensive assistive technology platform for the visually impaired

J. Rizzo, Yubo Pan, T. Hudson, E. Wong, Yi Fang
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引用次数: 26

Abstract

Sensor fusion represents a robust approach to ecologically valid obstacle identification in building a comprehensive electronic travel aid (ETA) for the blind and visually impaired. A stereoscopic camera system and an infrared sensor with 16 independent elements is proposed to be combined with a multi-scale convolutional neural network for this fusion framework. While object detection and identification can be combined with depth information from a stereo camera system, our experiments demonstrate that depth information may be inconsistent given material surfaces of specific potential collision hazards. This inconsistency can be easily remedied by supplementation with a more reliable depth signal from an alternate sensing modality. The sensing redundancy in this multi-modal strategy, as deployed in this platform, may enhance the situational awareness of a visually impaired end user, permitting more efficient and safer obstacle negotiation.
基于传感器融合的生态有效障碍识别:构建视障人士综合辅助技术平台
传感器融合代表了一种强大的方法,以生态有效的障碍识别,为盲人和视障人士建立一个全面的电子旅行辅助(ETA)。提出了一种包含16个独立元素的立体摄像系统和红外传感器,并结合多尺度卷积神经网络实现该融合框架。虽然物体检测和识别可以与来自立体相机系统的深度信息相结合,但我们的实验表明,给定特定潜在碰撞危险的材料表面,深度信息可能不一致。这种不一致可以很容易地通过补充来自另一种传感方式的更可靠的深度信号来纠正。在该平台中部署的这种多模式策略中的传感冗余可以增强视障最终用户的态势感知,从而实现更高效、更安全的障碍协商。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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