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Kernel Visual Keyword Description for Object and Place Recognition

机译:内核Visual关心对象和放置识别的描述

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The most important aspects in computer and mobile robotics are both visual object and place recognition; they have been used to tackle numerous applications via different techniques as established previously in the literature, however, combining the machine learning techniques for learning objects to obtain best possible recognition and as well as to obtain its image descriptors for describing the content of the image fully is considered as another vital way which can be used in computer vision. Thus, the ability of the system is to learn and describe the structural features of objects or places more effectively, which in turn; it leads to a correct recognition of objects. This paper introduces a method that uses Naive Base to combine the Kernel Principle Component (KPCA) features with HOG features from the visual scene. According to this approach, a set of SURF features and Histogram of Gradient (HOG) are extracted from a given image. The minimum Euclidean Distance between all SURF features is computed from the visual codebook which was constructed by K-means previously to be combined with HOG features. A classification method such as Support Vector Machine (SVM) was used for data analysis and the results indicate that KPCA with HOG method significantly outperforms bag of visual keyword (BOW) approach on Caltech-101 object dataset and IDOL visual place dataset.
机译:计算机和移动机器人中最重要的方面都是视觉对象和地点识别;它们已被用来通过先前在文献中建立的不同技术来解决许多应用,但是,组合机器学习技术用于学习对象以获得最佳可能识别,并且可以获得完全描述图像内容的图像描述符被认为是另一种可用于计算机视觉的重要方法。因此,系统的能力是更有效地学习和描述物体或地点的结构特征,这又是这样的;它导致对物体的正确识别。本文介绍了一种方法,使用Naive Base将内核原理组件(KPCA)功能与视觉场景中的猪特征组合。根据这种方法,从给定图像中提取一组梯度(HOG)的冲浪特征和直方图。所有冲浪特征之间的最小欧几里德距离是从Visual Codebook计算的,该视觉码本由以前与HOG特征组合的K-Means构成。诸如支持向量机(SVM)之类的分类方法用于数据分析,结果表明KPCA具有HOG方法的KPCA在CALTECH-101对象数据集和偶像视觉放置数据集中显着优于视觉关键字(弓)方法。

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