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3D object segmentation for shelf bin picking by humanoid with deep learning and occupancy voxel grid map

机译:具有深度学习和占用体素网格图的类人生物的3D对象分割,用于货架拣货

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Picking objects in a narrow space such as shelf bins is an important task for humanoid to extract target object from environment. In those situations, however, there are many occlusions between the camera and objects, and this makes it difficult to segment the target object three dimensionally because of the lack of three dimensional sensor inputs. We address this problem with accumulating segmentation result with multiple camera angles, and generating voxel model of the target object. Our approach consists of two components: first is object probability prediction for input image with convolutional networks, and second is generating voxel grid map which is designed for object segmentation. We evaluated the method with the picking task experiment for target objects in narrow shelf bins. Our method generates dense 3D object segments even with occlusions, and the real robot successfully picked target objects from the narrow space.
机译:在狭窄的空间中拾取诸如架子箱之类的物体是类人生物从环境中提取目标物体的一项重要任务。然而,在那些情况下,照相机和物体之间存在许多遮挡,并且由于缺乏三维传感器输入,这使得难以将目标物体三维地分割。我们通过累积多个相机角度的分割结果并生成目标对象的体素模型来解决此问题。我们的方法包括两个部分:第一是使用卷积网络对输入图像进行目标概率预测,第二是生成专为目标分割而设计的体素网格图。我们通过拣选任务实验针对狭窄货架箱中的目标对象评估了该方法。即使有遮挡,我们的方法也会生成密集的3D对象片段,而真正的机器人成功地从狭窄的空间中拾取了目标对象。

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