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Detect in RGB, Optimize in Edge: Accurate 6D Pose Estimation for Texture-less Industrial Parts

机译:在RGB中检测,在边缘中进行优化:针对无纹理的工业零件的精确6D姿态估计

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In order to solve robotic bin-picking problem in many industrial applications, accurate 6D object pose estimation is one of fundamental technologies. This paper presents a method for accurate 6D pose estimation from a single RGB image for texture-less industrial parts. These objects are common but still challenging to deal with, due to the fact that poor surface texture and brightness makes difficult to compute discriminative local appearance descriptors. The proposed method mainly consists of two stages, which ranges from the detection stage to the optimization stage. Firstly, all known objects in the RGB image are detected with 2D bounding box via a tiny convolutional neural network. Then, the second stage will optimize the 6D pose in the Edge image given several coarse initializations. These coarse initializations are generated from the Edge image via a hypothesis-evaluation scheme. Furthermore, the proposed method is validated by achieving state-of-the-art results of texture-less industrial parts for RGB input. According to practical experiments, the proposed method is accurate and robust enough to be applied on the robotic manipulation platform to complete a simple assembly task.
机译:为了解决许多工业应用中的机器人垃圾收集问题,准确的6D对象姿态估计是基本技术之一。本文提出了一种从无纹理工业零件的单个RGB图像中准确进行6D姿态估计的方法。这些对象是常见的,但仍具有挑战性,因为事实是差的表面纹理和亮度使得难以计算出可辨别的局部外观描述符。所提出的方法主要包括两个阶段,从检测阶段到优化阶段。首先,通过微小的卷积神经网络,使用2D边界框检测RGB图像中的所有已知对象。然后,第二阶段将在几次粗略初始化下优化Edge图像中的6D姿势。这些粗初始化是通过假设评估方案从Edge图像生成的。此外,通过实现用于RGB输入的无纹理工业部件的最新结果来验证所提出的方法。根据实际实验,提出的方法准确,鲁棒,足以应用于机器人操纵平台以完成简单的组装任务。

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