Depth gradient based segmentation of overlapping foreground objects in range images

A. Störmer, M. Hofmann, G. Rigoll
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引用次数: 18

Abstract

Using standard background modeling approaches, close or overlapping objects are often detected as a single blob. In this paper we propose a new and effective method to distinguish between overlapping foreground objects in data obtained from a time of flight sensor. For this we use fusion of the infrared and the range data channels. In addition a further processing step is introduced to evaluate if connected components should be further divided. This is done using nonmaximum suppression on strong depth gradients.
基于深度梯度的远景图像重叠前景目标分割
使用标准的背景建模方法,接近或重叠的对象通常被检测为单个blob。本文提出了一种新的、有效的方法来区分飞行时间传感器数据中重叠的前景目标。为此,我们采用了红外和距离数据通道的融合。此外,还引入了进一步的处理步骤来评估是否应进一步划分连接的组件。这是在强深度梯度上使用非最大抑制来完成的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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