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Fuzzy-neural self-adapting background modeling with automatic motion analysis for dynamic object detection

机译:用于运动目标检测的具有自动运动分析的模糊神经自适应背景建模

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In this paper we propose a system that involves a Background Subtraction, BS, model implemented in a neural Self Organized Map with a Fuzzy Automatic Threshold Update that is robust to illumination changes and slight shadow problems. The system incorporates a scene analysis scheme to automatically update the Learning Rates values of the BS model considering three possible scene situations. In order to improve the identification of dynamic objects, an Optical Flow algorithm analyzes the dynamic regions detected by the BS model, whose identification was not complete because of camouflage issues, and it defines the complete object based on similar velocities and direction probabilities. These regions are then used as the input needed by a Matte algorithm that will improve the definition of the dynamic object by minimizing a cost function. Among the original contributions of this work are; an adapting fuzzy-neural segmentation model whose thresholds and learning rates are adapted automatically according to the changes in the video sequence and the automatic improvement on the segmentation results based on the Matte algorithm and Optical flow analysis. Findings demonstrate that the proposed system produces a competitive performance compared with state-of-the-art reported models by using BMC and Li databases. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,我们提出了一个系统,该系统包括一个在神经自组织映射中实现的背景减法(BS)模型,该神经自组织映射具有对照明变化和轻微阴影问题具有鲁棒性的模糊自动阈值更新。该系统结合了一个场景分析方案,以考虑三种可能的场景情况自动更新BS模型的学习率值。为了改进对动态物体的识别,光流算法分析了由BS模型检测到的动态区域,该区域由于伪装问题而无法完全识别,并基于相似的速度和方向概率定义了完整的物体。然后将这些区域用作Matte算法所需的输入,该算法将通过最小化成本函数来改善动态对象的定义。这项工作的原始贡献包括:一个自适应的模糊神经分割模型,其阈值和学习率根据视频序列的变化自动调整,并基于Matte算法和光流分析对分割结果进行自动改进。研究结果表明,与最新报告的模型相比,使用BMC和Li数据库,提出的系统具有竞争优势。 (C)2015 Elsevier B.V.保留所有权利。

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