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Automatic object segmentation of unstructured scenes using colour and depth maps

机译:使用颜色和深度图自动对非结构化场景进行对象分割

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摘要

This study presents a segmentation pipeline that fuses colour and depth information to automatically separate objects of interest in video sequences captured from a quadcopter. Many approaches assume that cameras are static with known position, a condition which cannot be preserved in most outdoor robotic applications. In this study, the authors compute depth information and camera positions from a monocular video sequence using structure from motion and use this information as an additional cue to colour for accurate segmentation. The authors model the problem similarly to standard segmentation routines as a Markov random field and perform the segmentation using graph cuts optimisation. Manual intervention is minimised and is only required to determine pixel seeds in the first frame which are then automatically reprojected into the remaining frames of the sequence. The authors also describe an automated method to adjust the relative weights for colour and depth according to their discriminative properties in each frame. Experimental results are presented for two video sequences captured using a quadcopter. The quality of the segmentation is compared to a ground truth and other state-of-the-art methods with consistently accurate results.
机译:这项研究提出了一种分割管线,该管线融合了颜色和深度信息,以自动分离从四轴飞行器捕获的视频序列中的目标对象。许多方法都假定摄像机在已知位置下是静止的,而这种情况在大多数户外机器人应用中都无法保持。在这项研究中,作者使用运动的结构从单眼视频序列计算深度信息和相机位置,并将此信息用作颜色的附加提示以进行准确的分割。作者将问题与标准分段例程的模型建模为Markov随机字段类似,并使用图割优化进行分段。手动干预被最小化,并且仅需要确定第一帧中的像素种子,然后将其自动重新投影到序列的其余帧中。作者还描述了一种自动方法,可根据它们在每个帧中的区分属性来调整颜色和深度的相对权重。给出了使用四轴飞行器捕获的两个视频序列的实验结果。将分割的质量与基本事实和其他最新方法进行比较,结果始终如一。

著录项

  • 作者

    He Hu; Upcroft Ben;

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  • 年度 2013
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