Enhancing edge-based image descriptor models through colour unification

Dumusani Kunene, Vusi Skosana
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引用次数: 2

Abstract

The lack of suitable robust appearance models hinders the performance of most image descriptors. Descriptors often rely on pieces of information in images called image features to discriminate the contents of images. Most successful descriptors use gradient images for determining the overall shapes of objects. Consequently, the inferred features are often susceptible to the noise caused by shadows, reflections and inner textures within the object. Significant efforts have been made towards improving the performance of image classifiers, yet generic object detection remains an open problem. In this paper, a method aimed at improving existing appearance models is proposed. The focus is on enhancing the acquired information at fundamental stages to improve the robustness of common statistical learning classifiers, as seen with the work of Holger Winnemoller et al. with human subjects.The selective Gaussian blur filter was applied to several human classification datasets to reduce the amount of ambiguous low-frequency noise. Experiments were then conducted to determine whether the unification of similar colours in local image regions could improve the acquired image features. The classification results that were obtained with the processed images were competitive to the results obtained with the original images, however inconclusive for demonstrating the benefits of image smoothing.
通过颜色统一增强基于边缘的图像描述符模型
缺乏合适的鲁棒外观模型阻碍了大多数图像描述符的性能。描述符通常依赖于图像中称为图像特征的信息片段来区分图像的内容。大多数成功的描述符使用梯度图像来确定物体的整体形状。因此,推断出的特征往往容易受到阴影、反射和物体内部纹理引起的噪声的影响。在提高图像分类器的性能方面已经做出了重大的努力,但通用目标检测仍然是一个悬而未决的问题。本文提出了一种改进现有外观模型的方法。重点是在基本阶段增强获得的信息,以提高常见统计学习分类器的鲁棒性,正如Holger Winnemoller等人对人类受试者的工作所看到的那样。将选择性高斯模糊滤波应用于多个人类分类数据集,以减少模糊低频噪声的数量。然后进行实验,以确定局部图像区域相似颜色的统一是否可以改善获取的图像特征。处理后的图像得到的分类结果与原始图像得到的分类结果是有竞争力的,但是对于证明图像平滑的好处并没有定论。
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