基于Gabor滤波器的补丁描述符

Szidónia Lefkovits
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引用次数: 5

摘要

基于组件的目标检测的重要任务之一是定位目标的特征部分并对其进行描述,使其易于定位。提出了一种基于Gabor小波的局部图像描述子。由于参数空间的高维性,这些函数只能很费力地定义,并且很难将它们整合到理想的应用中。首先,为了减少参数的数量,考虑了一些理论关系。其次,在实验阶段,使用绅士boost学习算法确定给定图像patch的最合适滤波器。使用这个描述符,可以创建一个响应映射,它可以很容易地与众所周知的可变形对象模型相结合,以便检测目标对象的所需部分。与现有技术中发现的描述符相比,我们的描述符的优势在于所选的滤波器集并不总是相同的,但在微调参数之后,它为目标补丁选择最合适的滤波器,从而使描述符变得通用,同时也具有判别性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Novel Gabor filter-based patch descriptor
One of the most important tasks of component-based object detection is locating the characteristic object parts and describing them in order to be easily localizable. This paper presents a local image descriptor based on Gabor wavelets. Due to the high dimensionality of the parameter space, these functions can be defined only laboriously, and it is very difficult to integrate them into the desirable application. At first, in order to reduce the number of parameters, some theoretical relations are taken into account. Secondly, in the experiment phase, the most adequate filters for a given image patch are determined with the GentleBoost learning algorithm. Using this descriptor, a responses-map is created, which can be easily combined with the well-known deformable object model in order to detect the desired parts of the target object. The advantage of our descriptor compared to those found in the state of the art is that the selected filter set is not always the same, but after fine-tuning parameters, it selects the most appropriate filters for the target patch so that the descriptor becomes general, and at the same time, discriminative as well.
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