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An object recognition algorithm with structure-guided saliency detection and SVM classifier

机译:具有结构引导显着性检测和SVM分类器的目标识别算法

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Computer Vision is a field which deals with extracting, analyzing, processing and understanding the images. One of the major application of computer vision is Object Recognition. In this paper, an algorithm is proposed where, object recognition requires two tasks: (i) Object Detection and (ii) Object Classification. The former task, extracts constructive information from the image and detects the objects. Computational modeling of human visual system enables various applications and one of which include object detection. Therefore, saliency detection provides an effective method for object detection. The final task of the object recognition is object classification. Histogram of Gradient features are extracted from the saliency active region and given to a conventional SVM classifier. The accuracy of the proposed work has been experimentally evaluated in the ETH-80 dataset.
机译:计算机视觉是一个领域,涉及图像的提取,分析,处理和理解。对象识别是计算机视觉的主要应用之一。在本文中,提出了一种算法,其中,对象识别需要两个任务:(i)对象检测和(ii)对象分类。前一项任务是从图像中提取建设性信息并检测物体。人类视觉系统的计算建模可实现各种应用,其中之一包括对象检测。因此,显着性检测提供了一种有效的对象检测方法。对象识别的最终任务是对象分类。从显着性有效区域提取梯度特征直方图,并将其提供给常规SVM分类器。拟议工作的准确性已在ETH-80数据集中进行了实验评估。

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