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Rotationally and Illumination Invariant Descriptor Based On Intensity Order

机译:基于强度阶的旋转和照明不变性描述子

摘要

In this thesis, a novel method for local feature description where local features are grouped in normalized support regions with the intensity orders is proposed. Local features extracted using this kind of method are not only gives advantage of invariant to rotation and illumination changes, but also converts the image information into the descriptor. These features are calculated with different ways, one is based on gradient and other one is based on the intensity order. Local features calculated by the method of the gradient performs well in most of the cases such as blur, rotation and large illuminations and it overcome the problem of orientation estimation which is the major error source for false negatives in SIFT. In order to overcome mismatching problem, method of multiple support regions are introduced in the proposed method instead of using single support region which performs better than the single support region, even though single support region is better than SIFT. The idea of intensity order pooling is inherently rotational invariant without estimating a reference orientation. Experimental results show that the idea of intensity order pooling is efficient than the other descriptors, which are based on estimated reference orientation for rotational invariance.
机译:本文提出了一种新的局部特征描述方法,该方法将局部特征按照强度顺序归一化在支持区域中。使用这种方法提取的局部特征不仅具有不变的旋转和光照变化优势,而且还将图像信息转换为描述符。这些特征的计算方法不同,一种基于梯度,另一种基于强度顺序。通过梯度法计算的局部特征在大多数情况下(例如模糊,旋转和大光照)表现良好,并且克服了方向估计的问题,该问题是SIFT中假阴性的主要误差来源。为了克服失配问题,在所提出的方法中引入了多个支撑区域的方法,而不是使用比单个支撑区域性能更好的单个支撑区域,即使单个支撑区域比SIFT也更好。强度阶数池的概念本质上是旋转不变的,无需估计参考方向。实验结果表明,强度阶数池的思想比其他描述符有效,后者基于旋转不变性的估计参考方向。

著录项

  • 作者

    Sureah Buddarthi;

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  • 年度 2015
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