使用字典学习和压缩随机特征的图像分割

Geoff Bull, Junbin Gao, M. Antolovich
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引用次数: 2

摘要

图像分割旨在将图像中的像素划分为不同的区域,以辅助其他图像处理功能,如对象识别。在过去的几年里,字典学习方法在图像处理任务(如去噪)中变得非常流行,最近结构化的低秩字典学习已被证明能够在识别任务中取得有希望的结果。本文研究了字典学习在图像分割中的适用性。提出了一种结构化低秩字典学习算法,利用图像补丁中压缩的感知特征对图像进行分割。为了实现监督学习方法,使用训练涂鸦来指定图像中的像素类。然后从这些训练像素中学习分类器,并随后使用分类器对图像中的所有其他像素进行分类以形成分割。将许多字典学习模型与k均值/最近邻和支持向量机分类器进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Image Segmentation Using Dictionary Learning and Compressed Random Features
Image segmentation seeks to partition the pixels in images into distinct regions to assist other image processing functions such as object recognition. Over the last few years dictionary learning methods have become very popular for image processing tasks such as denoising, and recently structured low rank dictionary learning has been shown to be capable of promising results for recognition tasks. This paper investigates the suitability of dictionary learning for image segmentation. A structured low rank dictionary learning algorithm is developed to segment images using compressed sensed features from image patches. To enable a supervised learning approach, classes of pixels in images are designated using training scribbles. A classifier is then learned from these training pixels and subsequently used to classify all other pixels in the images to form the segmentations. A number of dictionary learning models are compared together with K-means/nearest neighbour and support vector machine classifiers.
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