目标分割的学习概率方法

Guillaume Larivière, M. S. Allili
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引用次数: 5

摘要

提出了一种基于物体形状概率学习的图像分割方法。从历史上看,分割大多被定义为数据驱动的自下而上的过程,其中像素根据客观标准(如区域均匀性等)分组到区域/对象中。特别是,它旨在将图像划分为连续的、同质的区域。在本文提出的工作中,我们建议结合关于物体形状和类别的先验知识来从背景中分割物体。分割过程由两部分组成。在第一部分中,使用对象碎片集构建对象形状模型。第二部分首先使用mean-shift算法将图像分割成均匀区域。然后,使用不同的物体形状模型作为支持信息,对几个物体假设进行了测试和验证。作为输出,我们的算法识别对象的类别,位置,以及其最佳分割。实验结果表明,该方法能够分割多个对象类别。
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A Learning Probabilistic Approach for Object Segmentation
This paper proposes a new method for figure-ground image segmentation based on a probabilistic learning approach of the object shape. Historically, segmentation is mostly defined as a data-driven bottom-up process, where pixels are grouped into regions/objects according to objective criteria, such as region homogeneity, etc. In particular, it aims at creating a partition of the image into contiguous, homogenous regions. In the proposed work, we propose to incorporate prior knowledge about the object shape and category to segment the object from the background. The segmentation process is composed of two parts. In the first part, object shape models are built using sets of object fragments. The second part starts by first segmenting an image into homogenous regions using the mean-shift algorithm. Then, several object hypotheses are tested and validated using the different object shape models as supporting information. As an output, our algorithm identifies the object category, position, as well as its optimal segmentation. Experimental results show the capacity of the approach to segment several object categories.
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