基于级联层次模型和逻辑析取正规网络的图像分割。

Mojtaba Seyedhosseini, Mehdi Sajjadi, Tolga Tasdizen
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引用次数: 80

摘要

上下文信息在解决图像分割等视觉问题中起着重要的作用。然而,语境信息的提取和有效利用仍然是一个难题。为了解决这一挑战,我们提出了一种多分辨率上下文框架,称为级联分层模型(CHM),它在分层框架中学习上下文信息以进行图像分割。在层次结构的每一层,分类器是基于下采样的输入图像和前一层的输出来训练的。然后,我们的模型将得到的多分辨率上下文信息整合到分类器中,以原始分辨率分割输入图像。我们通过层叠的层次框架来重复这个过程,以提高分割的准确性。在CHM中学习了多个分类器;因此,需要一个快速准确的分类器,使训练易于处理。由于在训练过程中学习了大量参数,分类器还需要具有抗过拟合的鲁棒性。我们引入了一种新的分类方案,称为逻辑析取正规网络(LDNN),它由逻辑sigmoid函数实现的自适应特征检测器层和分别计算合取和析取的两个固定逻辑单元层组成。我们证明了LDNN优于最先进的分类器,可以在CHM中使用以提高目标分割性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Image Segmentation with Cascaded Hierarchical Models and Logistic Disjunctive Normal Networks.

Contextual information plays an important role in solving vision problems such as image segmentation. However, extracting contextual information and using it in an effective way remains a difficult problem. To address this challenge, we propose a multi-resolution contextual framework, called cascaded hierarchical model (CHM), which learns contextual information in a hierarchical framework for image segmentation. At each level of the hierarchy, a classifier is trained based on downsampled input images and outputs of previous levels. Our model then incorporates the resulting multi-resolution contextual information into a classifier to segment the input image at original resolution. We repeat this procedure by cascading the hierarchical framework to improve the segmentation accuracy. Multiple classifiers are learned in the CHM; therefore, a fast and accurate classifier is required to make the training tractable. The classifier also needs to be robust against overfitting due to the large number of parameters learned during training. We introduce a novel classification scheme, called logistic disjunctive normal networks (LDNN), which consists of one adaptive layer of feature detectors implemented by logistic sigmoid functions followed by two fixed layers of logical units that compute conjunctions and disjunctions, respectively. We demonstrate that LDNN outperforms state-of-theart classifiers and can be used in the CHM to improve object segmentation performance.

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