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Multi-Scale Multi-Feature Context Modeling for Scene Recognition in the Semantic Manifold

机译:语义流形中场景识别的多尺度多特征上下文建模

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摘要

Before the big data era, scene recognition was often approached with two-step inference using localized intermediate representations (objects, topics, and so on). One of such approaches is the semantic manifold (SM), in which patches and images are modeled as points in a semantic probability simplex. Patch models are learned resorting to weak supervision via image labels, which leads to the problem of scene categories co-occurring in this semantic space. Fortunately, each category has its own co-occurrence patterns that are consistent across the images in that category. Thus, discovering and modeling these patterns are critical to improve the recognition performance in this representation. Since the emergence of large data sets, such as ImageNet and Places, these approaches have been relegated in favor of the much more powerful convolutional neural networks (CNNs), which can automatically learn multi-layered representations from the data. In this paper, we address many limitations of the original SM approach and related works. We propose discriminative patch representations using neural networks and further propose a hybrid architecture in which the semantic manifold is built on top of multiscale CNNs. Both representations can be computed significantly faster than the Gaussian mixture models of the original SM. To combine multiple scales, spatial relations, and multiple features, we formulate rich context models using Markov random fields. To solve the optimization problem, we analyze global and local approaches, where a top–down hierarchical algorithm has the best performance. Experimental results show that exploiting different types of contextual relations jointly consistently improves the recognition accuracy.
机译:在大数据时代之前,场景识别通常使用本地化的中间表示(对象,主题等)通过两步推理进行。这种方法之一是语义流形(SM),其中将补丁和图像建模为语义概率单纯形中的点。通过借助图像标签的弱监督来学习补丁模型,这导致在该语义空间中同时出现场景类别的问题。幸运的是,每个类别都有自己的共现模式,这些模式在该类别中的图像之间是一致的。因此,发现和建模这些模式对于提高此表示形式的识别性能至关重要。自从出现大数据集(例如ImageNet和Places)以来,这些方法已被贬低,转而使用功能更强大的卷积神经网络(CNN),后者可以从数据中自动学习多层表示。在本文中,我们解决了原始SM方法和相关工作的许多局限性。我们提出使用神经网络的判别性补丁表示,并进一步提出一种混合体系结构,其中语义流形建立在多尺度CNN之上。与原始SM的高斯混合模型相比,这两种表示的计算速度都快得多。为了结合多个尺度,空间关系和多个特征,我们使用马尔可夫随机场制定了丰富的上下文模型。为了解决优化问题,我们分析了全局和局部方法,其中自顶向下的分层算法具有最佳性能。实验结果表明,联合利用不同类型的上下文关系可以持续提高识别的准确性。

著录项

  • 来源
    《Image Processing, IEEE Transactions on》 |2017年第6期|2721-2735|共15页
  • 作者单位

    Key Laboratory of Intelligent Information Processing of Chinese Academy of Sciences (CAS), Institute of Computing Technology, CAS, Beijing, China;

    Key Laboratory of Intelligent Information Processing of Chinese Academy of Sciences (CAS), Institute of Computing Technology, CAS, Beijing, China;

    Key Laboratory of Intelligent Information Processing of Chinese Academy of Sciences (CAS), Institute of Computing Technology, CAS, Beijing, China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Semantics; Context modeling; Kernel; Manifolds; Support vector machines; Neural networks; Context;

    机译:语义;上下文建模;内核;歧管;支持向量机;神经网络;上下文;
  • 入库时间 2022-08-17 13:09:56

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