Weakly Supervised Manifold Learning for Dense Semantic Object Correspondence

Utkarsh Gaur, B. S. Manjunath
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引用次数: 14

Abstract

The goal of the semantic object correspondence problem is to compute dense association maps for a pair of images such that the same object parts get matched for very different appearing object instances. Our method builds on the recent findings that deep convolutional neural networks (DCNNs) implicitly learn a latent model of object parts even when trained for classification. We also leverage a key correspondence problem insight that the geometric structure between object parts is consistent across multiple object instances. These two concepts are then combined in the form of a novel optimization scheme. This optimization learns a feature embedding by rewarding for projecting features closer on the manifold if they have low feature-space distance. Simultaneously, the optimization penalizes feature clusters whose geometric structure is inconsistent with the observed geometric structure of object parts. In this manner, by accounting for feature space similarities and feature neighborhood context together, a manifold is learned where features belonging to semantically similar object parts cluster together. We also describe transferring these embedded features to the sister tasks of semantic keypoint classification and localization task via a Siamese DCNN. We provide qualitative results on the Pascal VOC 2012 images and quantitative results on the Pascal Berkeley dataset where we improve on the state of the art by over 5% on classification and over 9% on localization tasks.
密集语义对象对应的弱监督流形学习
语义对象对应问题的目标是为一对图像计算密集的关联映射,以便为非常不同的对象实例匹配相同的对象部分。我们的方法建立在最近的发现之上,即深度卷积神经网络(DCNNs)即使在进行分类训练时也会隐式地学习对象部分的潜在模型。我们还利用了一个关键的对应问题洞察力,即对象部分之间的几何结构在多个对象实例中是一致的。然后将这两个概念以一种新的优化方案的形式结合起来。该优化通过奖励在流形上投影更近的特征来学习特征嵌入,如果特征空间距离较低。同时,对几何结构与观测到的目标部位几何结构不一致的特征簇进行处罚。通过将特征空间相似度和特征邻域上下文结合在一起,学习到语义相似的对象部分的特征聚类的流形。我们还描述了通过连体DCNN将这些嵌入特征转移到语义关键点分类和定位任务的姊妹任务中。我们在Pascal VOC 2012图像上提供定性结果,在Pascal Berkeley数据集上提供定量结果,其中我们在分类任务上提高了5%以上,在定位任务上提高了9%以上。
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