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Pallet detection and localization with RGB image and depth data using deep learning techniques

机译:使用深度学习技术与RGB图像和深度数据的托盘检测和定位

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This paper presents a novel approach of pallet identification and localization algorithm (PILA) based on RGB image and depth data. The algorithm is implemented in C++ for real-time running and the RGB and depth data from low-cost RGB-D camera. Deep neural network (DNN) method is applied to detect and locate the pallet in the RGB images. The pallet's point cloud data is correlated with the labeled region of interest (ROI) in the RGB images through RGB-D fusion. The pallet's front-face plane is extracted and the orientation of the pallet is obtained at the same time. The triangle centric points of pallet's front-face could be determined with extracting x and y lines at the edge by the simple geometrical rules. Experimentally, the orientation angle and centric location of the two kinds of pallets are investigated with natural pallet surface without any artificial markings. The results show that the pallet could be located with the 3D localization accuracy of 1cm and the angle resolution of 0.4 degree at the distance of 3m. The end-to-end running time is less than 700 ms from CAN-IO interface and this is a promising solution for autonomous pallet picking instrument and self-driving forklift applications.
机译:本文基于RGB图像和深度数据介绍了托盘识别和定位算法(Pila)的新方法。该算法在C ++中实现,用于实时运行和RGB和来自低成本RGB-D相机的深度数据。深神经网络(DNN)方法被应用于检测和定位RGB图像中的托盘。托盘的点云数据通过RGB-D融合与RGB图像中的标记区域(ROI)相关联。提取托盘的正面平面,同时获得托盘的取向。可以通过简单的几何规则在边缘提取x和y线来确定托盘前面的三角形中心点。通过实验,使用自然托盘表面来研究两种托盘的定向角和中心位置,没有任何人造标记。结果表明,托盘可以位于3厘米的3D定位精度,角度分辨率为0.4度,距离为3M。从CAN-IO接口的端到端运行时间小于700毫秒,这是自动托盘采摘仪器和自动驾驶叉车应用的有希望的解决方案。

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