Deep Workpiece Region Segmentation for Bin Picking
Muhammad Usman Khalid, Janik M. Hager, Werner Kraus, Marco F. Huber,, Marc Toussaint

TL;DR
This paper introduces a real-time deep learning framework for segmenting workpiece regions in point clouds to improve bin picking accuracy and efficiency, addressing challenges of distinguishing workpieces from the bin bottom.
Contribution
It presents a novel fully convolutional neural network trained on simulated and automatically labeled real data for effective workpiece segmentation in industrial bin picking.
Findings
Improves workpiece detection accuracy in bin picking.
Reduces computation time by approximately 1 second.
Enhances pose estimation reliability.
Abstract
For most industrial bin picking solutions, the pose of a workpiece is localized by matching a CAD model to point cloud obtained from 3D sensor. Distinguishing flat workpieces from bottom of the bin in point cloud imposes challenges in the localization of workpieces that lead to wrong or phantom detections. In this paper, we propose a framework that solves this problem by automatically segmenting workpiece regions from non-workpiece regions in a point cloud data. It is done in real time by applying a fully convolutional neural network trained on both simulated and real data. The real data has been labelled by our novel technique which automatically generates ground truth labels for real point clouds. Along with real time workpiece segmentation, our framework also helps in improving the number of detected workpieces and estimating the correct object poses. Moreover, it decreases the…
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