人工智能
计算机视觉
计算机科学
箱子
基本事实
RGB颜色模型
能见度
深度图
对象(语法)
单色
图像(数学)
地理
算法
气象学
作者
Jun Yang,Yi‐Zhou Gao,Dong Li,Steven L. Waslander
标识
DOI:10.1109/iros51168.2021.9635871
摘要
In robotic bin-picking applications, the perception of texture-less, highly reflective parts is a valuable but challenging task. The high glossiness can introduce fake edges in RGB images and inaccurate depth measurements, especially in heavily cluttered bin scenarios. In this paper, we present the ROBI (Reflective Objects in BIns) dataset, a public dataset for 6D object pose estimation and multi-view depth fusion in robotic bin-picking scenarios. The ROBI dataset includes a total of 63 bin-picking scenes captured with two active stereo cameras: a high-cost Ensenso sensor and a low-cost RealSense sensor. For each scene, the monochrome/RGB images and depth maps are captured from sampled view spheres around the scene, and are annotated with accurate 6D poses of visible objects and an associated visibility score. For evaluating the performance of depth fusion, we captured the ground truth depth maps by high-cost Ensenso camera with objects coated in anti-reflective scanning spray. To show the utility of the dataset, we evaluated the representative algorithms of 6D object pose estimation and multi-view depth fusion on the full dataset. Evaluation results demonstrate the difficulty of highly reflective objects, especially in difficult cases due to the degradation of depth data quality, severe occlusions, and cluttered scenes. The ROBI dataset is available online at https://www.trailab.utias.utoronto.ca/robi.
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