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Saliency based proposal refinement in robotic vision

机译:基于显着性的机器人视觉提案优化

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Detecting object grasps from the given image has attracted lots of research concerns in the field of robotic vision. Despite many solutions have been proposed, they tend to simply focus on the detection problem and strongly assume that the object has been placed in the ideal viewing position. In this paper, we propose to refine object proposal based on the saliency measurement. It can be used to refine the object detection results and further guides the self-movement of robotic arm to achieve a better grasping state. First, we dilate the inaccurate proposal to cover more object regions and extract object using saliency-like evaluation measurement. Then, we use superpixel-based sliding windows with various scales and aspect ratios to localize region with highest response. Compared with traditionally exhaustive sliding search, our method reduces the number of sliding windows and hence runs faster. Experiments on public dataset and real test both verify the effectiveness of our proposal method.
机译:从给定图像中检测物体的抓握已经引起了机器人视觉领域的许多研究关注。尽管已经提出了许多解决方案,但是它们倾向于仅关注检测问题,并强烈假定物体已被放置在理想​​的观察位置。本文提出了基于显着性度量的对象提议。它可用于细化物体检测结果,并进一步指导机械臂的自我运动,以达到更好的抓握状态。首先,我们扩大不准确的建议以覆盖更多的对象区域,并使用类似显着性的评估度量来提取对象。然后,我们使用具有不同比例和纵横比的基于超像素的滑动窗口来定位具有最高响应的区域。与传统的详尽滑动搜索相比,我们的方法减少了滑动窗口的数量,因此运行速度更快。在公共数据集上进行的实验和真实测试都证明了我们建议方法的有效性。

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