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A Survey of Extended Methods to the Bag of VisualWords for Image Categorization and Retrieval

机译:图像分类和检索袋袋的扩展方法调查

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The semantic gap is a crucial issue in the enhancement of computer vision. The user longs for retrieving images on a semantic level, but the image characterizations can only give a low-level similarity. As a result, recording a stage medium between high-level semantic concepts and low-level visual features is a stimulating task. A recent work, called Bag of visual Words (BoW) have arisen to resolve this difficulty in greater generality through the conception of techniques genius relevantly learning semantic vocabularies. In spite of its clarity and effectiveness, the building of a codebook is a critical step which is ordinarily performed by coding and pooling step. Yet, it is still difficult to build a compact codebook with shortened calculation cost. For that, several approaches try to overcome these difficulties and to improve image representation. In this paper, we introduce a survey investigates to cover the inadequacy of a full description of the most important public approaches for image categorization and retrieval.
机译:语义差距是增强计算机视觉的关键问题。用户长期以要在语义级别检索图像,但图像特征只能提供低级相似性。结果,在高级语义概念和低级视觉特征之间记录阶段介质是刺激任务。最近的工作,称为袋子的视觉词语(弓)通过技术概念,通过Teachius Corporation学习语义词汇表的概念来解决这种困难。尽管其清晰度和有效性,但是码本的建设是通过编码和汇总步骤来执行的关键步骤。然而,仍然很难构建一个具有缩短计算成本的紧凑码。为此,几种方法试图克服这些困难并改善图像表示。在本文中,我们介绍了一项调查调查,以涵盖更重要的公众对图像分类和检索方法的完整描述的不足。

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