Object Detection Using Haar Feature Selection Optimization

C. Demirkir, B. Sankur
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引用次数: 6

Abstract

Object detection in still images is one of the common problems which is needed to be solved in a robust and reliable manner. Main focus on this work is the designing of classifiers based on Haar like simple features to obtain a good and efficient detection performance. This problem corresponds to the so called feature selection problem which is common in the pattern classifier systems. Classifiers used to detect objects are based on the simple Haar like features and these features are selected using systematic and general evolutionary based algorithm. The objective is to build a set of classifiers which respond stronger to the features present in object patterns than to non-object patterns, thereby improving the class discrimination between these two classes. This approach combines the classifier design with feature selection by using a genetic algorithm (GA). In the feature selection part of the algorithm a GA algorithm which the Haar features are encoded using their parameters in a single chromosome and optimized using genetic operators. During optimization the features which show similar characteristics in the parameter space are selected using a cluster based partitioning algorithm and thereby redundancy in the features is eliminated and a more compact Haar feature set can be obtained. Performances of the resulting chromosomes are measured using a fitness measure which is based on the separation of the two classes samples over a validation set. The resulting object detection structure is tested for near frontal face images in the cluttered background images
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基于Haar特征选择优化的目标检测
静止图像中的目标检测是一个常见的问题,需要以鲁棒可靠的方式解决。本工作的重点是设计基于Haar类简单特征的分类器,以获得良好高效的检测性能。这个问题对应于模式分类器系统中常见的特征选择问题。用于检测目标的分类器基于简单的Haar类特征,并使用系统的和通用的基于进化的算法选择这些特征。目标是构建一组分类器,这些分类器对对象模式中存在的特征的响应强于对非对象模式的响应,从而改进这两个类之间的类区分。该方法利用遗传算法将分类器设计与特征选择相结合。在算法的特征选择部分,采用遗传算子对Haar特征在单个染色体上的参数进行编码并进行优化的GA算法。在优化过程中,采用基于聚类的划分算法选择在参数空间中表现出相似特征的特征,从而消除特征中的冗余,得到更紧凑的Haar特征集。所得到的染色体的性能使用基于验证集上两类样本分离的适应度度量来测量。在杂乱的背景图像中对所得到的近正面人脸图像的目标检测结构进行了测试
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