Ito Seigo, Hiratsuka Shigeyoshi, Ohta Mitsuhiko, Matsubara Hiroyuki, Ogawa Masaru
Department of System & Electronics Engineering, Toyota Central R&D Labs., Inc., 41-1, Yokomichi, Nagakute, Aichi 480-1192, Japan.
Sensors (Basel). 2018 Jan 10;18(1):177. doi: 10.3390/s18010177.
We present our third prototype sensor and a localization method for Automated Guided Vehicles (AGVs), for which small imaging LIght Detection and Ranging (LIDAR) and fusion-based localization are fundamentally important. Our small imaging LIDAR, named the Single-Photon Avalanche Diode (SPAD) LIDAR, uses a time-of-flight method and SPAD arrays. A SPAD is a highly sensitive photodetector capable of detecting at the single-photon level, and the SPAD LIDAR has two SPAD arrays on the same chip for detection of laser light and environmental light. Therefore, the SPAD LIDAR simultaneously outputs range image data and monocular image data with the same coordinate system and does not require external calibration among outputs. As AGVs travel both indoors and outdoors with vibration, this calibration-less structure is particularly useful for AGV applications. We also introduce a fusion-based localization method, named SPAD DCNN, which uses the SPAD LIDAR and employs a Deep Convolutional Neural Network (DCNN). SPAD DCNN can fuse the outputs of the SPAD LIDAR: range image data, monocular image data and peak intensity image data. The SPAD DCNN has two outputs: the regression result of the position of the SPAD LIDAR and the classification result of the existence of a target to be approached. Our third prototype sensor and the localization method are evaluated in an indoor environment by assuming various AGV trajectories. The results show that the sensor and localization method improve the localization accuracy.
我们展示了用于自动导引车(AGV)的第三个原型传感器和一种定位方法,对于AGV而言,小型成像激光雷达(LIDAR)和基于融合的定位至关重要。我们的小型成像激光雷达名为单光子雪崩二极管(SPAD)激光雷达,它采用飞行时间法和SPAD阵列。SPAD是一种能够在单光子水平进行检测的高灵敏度光电探测器,并且SPAD激光雷达在同一芯片上有两个SPAD阵列,用于检测激光和环境光。因此,SPAD激光雷达以相同的坐标系同时输出距离图像数据和单目图像数据,并且在输出之间不需要外部校准。由于AGV在室内和室外行驶时都会产生振动,这种无需校准的结构对于AGV应用特别有用。我们还介绍了一种基于融合的定位方法,名为SPAD DCNN,它使用SPAD激光雷达并采用深度卷积神经网络(DCNN)。SPAD DCNN可以融合SPAD激光雷达的输出:距离图像数据、单目图像数据和峰值强度图像数据。SPAD DCNN有两个输出:SPAD激光雷达位置的回归结果和待接近目标存在的分类结果。我们的第三个原型传感器和定位方法在室内环境中通过假设各种AGV轨迹进行了评估。结果表明,该传感器和定位方法提高了定位精度。