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Singular Value Decomposition based Features for Vehicle Classification under Cluttered Background and Mild Occlusion

机译:基于奇异值分解的车辆分类在杂乱背景下的特征和轻度闭塞

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Vehicle recognition and classification in a multi-environment containing cluttered background and occlusion is an important part of machine vision. The goal of this paper is to build a vehicle classifier that identifies a "car" vehicle from "non-car" amidst complex environment taken from university of Illinois at Urbana-Champaign (UIUC) standard database. The image is divided into sub-blocks of equal size without any pre-processing. The Singular Value Decomposition (SVD) based features are extracted from each sub-block. The features of the objects are fed to the back-propagation neural classifier after normalization. The performance is compared with various categories of blocking models. Quantitative evaluation shows improved results of 93.6%. A critical evaluation of this approach under the proposed standards is presented.
机译:在包含杂乱的背景和闭塞的多环境中的车辆识别和分类是机器视觉的重要组成部分。本文的目标是建立一个车辆分类器,该分类器识别来自伊利诺伊大学的“非车”的“汽车”车辆在Urbana-Champaign(Uiuc)标准数据库中获取的复杂环境。图像被分成相同尺寸的子块,而无需任何预处理。从每个子块中提取基于奇异值分解(SVD)的特征。在归一化之后,对象的特征被馈送到后传播神经分类器。将性能与各类阻塞模型进行比较。定量评估显示出93.6%的改善结果。提出了根据拟议标准的这种方法的关键评估。

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