Motion detection based on the combining of the background subtraction and spatial color information

Omar El Harrouss, Driss Moujahid, H. Tairi
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引用次数: 22

Abstract

To detect the moving objects in a video sequence based on background subtraction approaches, a background model should be generated at the first time before subtract it from each image of the sequence and then segmenting the moving objects. But this detection can be difficult when the environment is influenced by illumination and weather changes. In The goal to solve the problem of environmental illumination changes in the background model and to classify pixels of the current image as foreground or background, a new method of background subtraction is presented in this paper. Firstly, the spatial color information is used to generate the background of each color space (R, G, and B) of the sequence. The absolute difference is computed to subtracting the background before compute the binary image of the moving objects using a threshold. This threshold is also used to update the background at each new image. The experimental results demonstrate that our approach is effective and accurate for moving objects detection and the use of spatial color information was robust to environmental illumination change. The experimental results are also compared with the results of the background estimation algorithm with Σ-Δ (SD) and Motion detection with pyramid structure of background model (MDPS).
基于背景减法和空间色彩信息相结合的运动检测
基于背景相减方法检测视频序列中的运动目标,首先需要生成背景模型,然后从序列的每个图像中相减背景模型,然后分割运动目标。但是,当环境受到光照和天气变化的影响时,这种检测可能会很困难。为了解决背景模型中环境光照变化的问题,并将当前图像的像素划分为前景或背景,本文提出了一种新的背景相减方法。首先,利用空间颜色信息生成序列各颜色空间(R、G、B)的背景;在计算运动目标的二值图像之前,先计算绝对差值来减去背景。该阈值还用于更新每个新图像的背景。实验结果表明,该方法对运动目标检测是有效和准确的,并且利用空间颜色信息对环境光照变化具有鲁棒性。实验结果还与Σ-Δ背景估计算法(SD)和金字塔结构背景模型运动检测算法(MDPS)的结果进行了比较。
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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