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Object Detection Using Color Entropies and a Fuzzy Classifier

机译:使用颜色熵和模糊分类器的目标检测

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This paper proposes a novel approach to specific object detection in complex scenes using color-based entropy features and a fuzzy classifier (FC). Appearances of the detected objects are assumed to contain multiple colors in non-homogeneous distributions that make it difficult to detect these objects using shape features. The proposed detection approach consists of two filtering phases with two different novel color-based entropy features. The first phase filters a test pattern with the entropy of color component (ECC). A self-splitting clustering (SSC) algorithm is proposed to automatically generate clusters in the hue and saturation (HS) color space according to the composing pixels of an object. The ECC value is computed from histograms of pixels in the found clusters and is used to generate object candidates. The second filtering phase uses the entropies of geometric color distributions (EGCD) to filter the object candidates obtained from the first phase. An EGCD is computed for each of the clustered composing colors of a candidate object. The EGCD values are fed to an FC to enable advanced filtering. A new FC using the SSC algorithm and support vector machine (FC-SSCSVM) for antecedent and consequent parameter learning, respectively, is proposed to improve detection performance. Experimental results on the detection of different objects and comparisons with various detection approaches and classifiers verify the advantage of the proposed detection approach using the FC-SSCSVM.
机译:本文提出了一种新颖的方法,该方法使用基于颜色的熵特征和模糊分类器(FC)对复杂场景中的特定对象进行检测。假定检测到的对象的外观包含不均匀分布的多种颜色,这使得很难使用形状特征检测这些对象。所提出的检测方法包括具有两个不同的新颖的基于颜色的熵特征的两个滤波阶段。第一阶段用颜色分量的熵(ECC)过滤测试图案。提出了一种自分裂聚类(SSC)算法,可以根据对象的组成像素在色相和饱和度(HS)色彩空间中自动生成聚类。 ECC值是根据找到的群集中像素的直方图计算得出的,并用于生成候选对象。第二过滤阶段使用几何颜色分布的熵(EGCD)过滤从第一阶段获得的对象候选对象。针对候选对象的每个聚类组成颜色计算EGCD。 EGCD值被馈送到FC以启用高级过滤。提出了一种使用SSC算法和支持向量机(FC-SSCSVM)分别进行先验和后续参数学习的新FC,以提高检测性能。关于不同物体的检测以及与各种检测方法和分类器的比较的实验结果证明了使用FC-SSCSVM提出的检测方法的优势。

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