Robust invariant descriptors for visual object recognition

B. Ganesharajah, S. Mahesan, U. Pinidiyaarachchi
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引用次数: 2

Abstract

In the state-of-the-art visual object recognition, there are a number of descriptors that have been proposed for various visual recognition tasks. But it is still difficult to decide which descriptors have more significant impact on this task. The descriptors should be distinctive and at the same time robust to changes in viewing conditions. This paper evaluates the performance of two distinctive feature descriptors, known as SIFT and extended-SURF (e-SURF) in the context of object class recognition. Local features are computed for 11 object classes from PASCAL VOC challenge 2007 dataset and clustered using K-means method. Support Vector Machines (SVM) is used in order to analyse the performance of the descriptors in recognition. By evaluating these two descriptors it can be concluded that e-SURF slightly perform better than SIFT descriptors.
视觉目标识别的鲁棒不变量描述符
在最先进的视觉对象识别中,有许多描述符已经被提出用于各种视觉识别任务。但是仍然很难确定哪个描述符对这个任务有更大的影响。描述符应该是独特的,同时对观察条件的变化具有鲁棒性。本文评估了两种不同的特征描述符SIFT和扩展surf (e-SURF)在目标类识别中的性能。从PASCAL VOC challenge 2007数据集中计算了11个对象类的局部特征,并使用K-means方法聚类。使用支持向量机(SVM)来分析描述符在识别中的性能。通过对这两种描述符的评价,可以得出e-SURF的性能略优于SIFT的结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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