Walking while using a smartphone is becoming a major pedestrian safety concern as people may unknowingly bump into various obstacles that could lead to severe injuries. In this paper, we propose ObstacleWatch, an acoustic-based obstacle collision detection system to improve the safety of pedestrians who are engaged in smartphone usage while walking. ObstacleWatch leverages the advanced audio hardware of the smartphone to sense the surrounding obstacles and infers fine-grained information about the frontal obstacle for collision detection. In particular, our system emits well-designed inaudible beep signals from the smartphone built-in speaker and listens to the reflections with the stereo recording of the smartphone. By analyzing the reflected signals received at two microphones, ObstacleWatch is able to extract fine-grained information of the frontal obstacle including the distance, angle, and size for detecting the possible collisions and to alert users. Our experimental evaluation under two real-world environments with different types of phones and obstacles shows that ObstacleWatch achieves over 92% accuracy in predicting obstacle collisions with distance estimation errors at about 2 cm. Results also show that ObstacleWatch is robust to different sizes of objects and is compatible with different phone models with low energy consumption.
翻译:使用智能手机时行走正在成为行人的一个主要安全关切,因为人们可能在不知不觉中遇到可能导致严重伤害的各种障碍。 在本文中,我们提议采用基于声学的障碍碰撞探测系统,即基于声音的碰撞探测系统,以提高行人在步行时使用智能手机的安全性。 障碍观察利用智能手机的先进音频硬件来感知周围的障碍,并推断出关于碰撞探测前方障碍的细微的微小信息。 特别是,我们的系统从智能手机的内置扬声器中发出精心设计的无法听得见的铃声信号,并用智能手机的音响录制来倾听反射镜。 通过分析两部麦克风收到的反射信号, 障碍观察能够提取出前方障碍的精细信息, 包括距离、 角度和大小, 以探测可能的碰撞, 并提醒用户。 我们用两种不同类型手机和障碍在两个真实世界环境中的实验性评价显示, Obstactorhear 观察在预测与2厘米的远程估测错发生碰撞时达到92%的精确度以上。 结果还显示, 与不同的低能观测是不同的频率模型的可靠。