DECODE: A Novel Method of DEep CNN-based Object DEtection using Chirps Emission and Echo Signals in Indoor Environment

H. Nam, J. Jeong
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Abstract

Humans mainly recognize surrounding objects using visual and auditory information among the five senses (sight, hearing, smell, touch, taste). Major research related to the latest object recognition mainly focuses on analysis using image sensor information. In this paper, after emitting various chirp audio signals into the observation space, collecting echoes through a 2-channel receiving sensor, converting them into spectral images, an object recognition experiment in 3D space was conducted using an image learning algorithm based on deep learning. Through this experiment, the experiment was conducted in a situation where there is noise and echo generated in a general indoor environment, not in the ideal condition of an anechoic room, and the object recognition through echo was able to estimate the position of the object with 83% accuracy. In addition, it was possible to obtain visual information through sound through learning of 3D sound by mapping the inference result to the observation space and the 3D sound spatial signal and outputting it as sound. This means that the use of various echo information along with image information is required for object recognition research, and it is thought that this technology can be used for augmented reality through 3D sound.
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DECODE:一种利用室内环境中啁啾发射和回波信号进行深度cnn目标检测的新方法
人类主要利用视觉、听觉、嗅觉、触觉、味觉五种感官中的视觉和听觉信息来识别周围的物体。最新的目标识别研究主要集中在利用图像传感器信息进行分析。本文采用基于深度学习的图像学习算法,将各种啁啾音频信号发射到观测空间,通过双通道接收传感器采集回波,转换成光谱图像,在三维空间进行物体识别实验。通过本实验,实验是在一般室内环境中产生噪声和回波的情况下进行的,而不是在消声室的理想条件下进行的,通过回波进行的物体识别能够以83%的准确率估计物体的位置。此外,通过对三维声音的学习,将推理结果映射到观察空间和三维声音空间信号,并作为声音输出,可以通过声音获得视觉信息。这意味着物体识别研究需要使用各种回声信息以及图像信息,并且认为该技术可以通过3D声音用于增强现实。
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