非参数场景解析:通过密集场景对齐进行标签转移

Ce Liu, Jenny Yuen, A. Torralba
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引用次数: 361

摘要

本文提出了一种基于密集场景对齐的非参数目标识别和场景分析方法。给定输入图像,我们使用改进的粗到细的SIFT流算法从带有注释图像的大型数据库中检索其最佳匹配项,该算法将两幅图像中的结构对齐。基于从SIFT流中获得的密集场景对应关系,我们的系统扭曲了现有的注释,并在马尔可夫随机场框架中集成多个线索来分割和识别查询图像。我们的非参数场景分析系统在具有挑战性的数据库上取得了良好的实验结果。与现有的需要对每个对象类别进行训练的对象识别方法相比,我们的系统易于实现,参数很少,并且在检索/对齐过程中自然地嵌入上下文信息。
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Nonparametric scene parsing: Label transfer via dense scene alignment
In this paper we propose a novel nonparametric approach for object recognition and scene parsing using dense scene alignment. Given an input image, we retrieve its best matches from a large database with annotated images using our modified, coarse-to-fine SIFT flow algorithm that aligns the structures within two images. Based on the dense scene correspondence obtained from the SIFT flow, our system warps the existing annotations, and integrates multiple cues in a Markov random field framework to segment and recognize the query image. Promising experimental results have been achieved by our nonparametric scene parsing system on a challenging database. Compared to existing object recognition approaches that require training for each object category, our system is easy to implement, has few parameters, and embeds contextual information naturally in the retrieval/alignment procedure.
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