Object Recognition by Modified Scale Invariant Feature Transform

Gule Saman, S. Gilani
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引用次数: 10

Abstract

This paper presents a methodology for object recognition. It relies on the extraction of distinctive invariant image features that can be used to find the correspondence between different views of an object or a scene. These features are invariant to image rotation and scaling, they have substantial robustness to changes in viewpoint and illumination and addition of noise. Mikolajczyk [1] have evaluated the SIFT [2] algorithm along with other approaches and have identified it as the most resistant to image distortions. This paper improves on the SIFT algorithm by modifying its descriptor and the keypoint localization steps. The proposed technique uses the salient aspects of image gradient in keypoints neighbourhood. Moreover, instead of smoothed weighted histograms of SIFT, kernel principal component analysis (KPCA) is applied in order to normalize the image patch. Comparative results show that KPCA based descriptors are more distinctive, robust to distortions and compact. The evaluation of the technique is performed using recall precision [3].
基于改进尺度不变特征变换的目标识别
本文提出了一种目标识别方法。它依赖于提取独特的不变图像特征,这些特征可用于找到物体或场景的不同视图之间的对应关系。这些特征对图像旋转和缩放具有不变性,对视点和光照的变化以及噪声的添加具有很强的鲁棒性。Mikolajczyk[1]已经评估了SIFT[2]算法以及其他方法,并认为它最能抵抗图像失真。本文通过修改SIFT算法的描述符和关键点定位步骤,对SIFT算法进行了改进。该方法利用图像梯度的显著性特征在关键点邻域中进行邻域分析。此外,采用核主成分分析(KPCA)代替SIFT对加权直方图进行平滑处理,对图像patch进行归一化处理。对比结果表明,基于KPCA的描述符具有较强的特征性、抗失真能力和紧凑性。该技术的评估使用召回精度进行[3]。
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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