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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >A Light-Weight Change Detection Method Using YCbCr-Based Texture Consensus Model
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A Light-Weight Change Detection Method Using YCbCr-Based Texture Consensus Model

机译:基于YCBCR的纹理共识模型的轻量级变化检测方法

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摘要

Background subtraction is a prerequisite and often the very first step employed in several high-level and real-time computer vision applications. Several parametric and non-parametric change detection algorithms employing multiple feature spaces have been proposed to date but none has proven to be robust against all challenges that can possibly be posed in a complex real-time environment. Amongst the varied challenges posed, illumination variations, shadows, dynamic backgrounds, camouflaged and bootstrapping artifacts are some of the well-known problems. This paper presents a light-weight hybrid change detection algorithm that integrates a novel combination of RGB color space and conditional YCbCr-based XCS-LBP texture descriptors (YXCS-LBP) into a modified pixel-based background model. The conditional employment of light-weight YXCS-LBP texture features with the modified Visual background extractor (ViBe) aiming at reduction in false positives, produces outperforming results without incurring much memory and computational cost. The random and time-subsampled update strategy employed with the proposed classification procedure ensures the efficient suppression of shadows and bootstrapping artifacts along with the complete retention of long-term static objects in the foreground masks. Comprehensive performance analysis of the proposed technique on publicly available Change Detection dataset (2014 CDnet dataset) demonstrates the superiority of the proposed technique over different state-of-the-art-methods against varied challenges.
机译:背景下减法是一种先决条件,并且通常在几个高级和实时计算机视觉应用中使用的第一步。已经提出了几种采用多个特征空间的参数和非参数变化检测算法,但没有证明是对可能在复杂的实时环境中可能构成的所有挑战的稳健性。在提出的各种挑战中,照明变化,阴影,动态背景,伪装和自动启动伪像是一些众所周知的问题。本文介绍了一种轻量级混合改变检测算法,其集成了RGB颜色空间和条件基于YCBCR的条件基于YCBCR的XCS-LBP纹理描述符(YXCS-LBP)的新颖组合到基于修改的像素的背景模型。轻量级YXCS-LBP纹理特征的条件就业与针对误报的改进的视觉背景提取器(Vibe),产生优于的结果,而不会产生太多的存储器和计算成本。采用所提出的分类过程采用的随机和时间限制更新策略确保了有效地抑制阴影和自动启动伪像以及前景掩模中的长期静态物体的完全保留。在公开的改变检测数据集(2014 CDNET数据集)上综合性能分析(2014 CDNET DataSet)展示了不同现实方法对不同挑战的提出技术的优越性。

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