Geometric context-preserving progressive transmission in mobile visual search

J. Xia, Ke Gao, Dongming Zhang, Zhendong Mao
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引用次数: 11

Abstract

Progressive transmission is very effective to reduce retrieval latency in mobile visual search. However, the acceleration effects of existing progressive transmission strategies are often limited because of the neglect of geometric information in the query image. This paper proposes an effective and efficient geometric context-preserving progressive transmission method, which is suitable for mobile visual search. Here a query image is divided into blocks and local features in the same block are used as query units rather than a single feature. Since clustered features with geometric information are more discriminative, only a few of them could support correct matching with high precision. Thus our method significantly decreases the number of features needed for transmission, and dramatically reduces the retrieval latency. Experiments on Stanford dataset for mobile visual search show that, with comparable precision, we uses 43% less retrieval time than existing progressive transmission method. Moreover, we establish and release a large-scale image dataset called MVSBench which is more difficult and suitable for mobile visual search. It contains 75500 images and considers many variations like view change, blur, scale, illumination and rotation. MVSBench is another major contribution of this paper, and our method also outperforms other strategies on this dataset.
移动视觉搜索中保持几何上下文的渐进式传输
在移动视觉搜索中,渐进式传输对于减少检索延迟非常有效。然而,由于忽略了查询图像中的几何信息,现有的渐进式传输策略的加速效果往往受到限制。本文提出了一种适用于移动视觉搜索的高效几何上下文保持渐进传输方法。这里将查询图像划分为块,并使用同一块中的局部特征作为查询单元,而不是单个特征。由于具有几何信息的聚类特征具有较强的判别性,只有少数聚类特征能够支持高精度的正确匹配。因此,我们的方法大大减少了传输所需的特征数量,并大大降低了检索延迟。在斯坦福数据集上进行的移动视觉搜索实验表明,在相同的精度下,我们比现有的渐进式传输方法节省了43%的检索时间。此外,我们还建立并发布了一套难度更高、更适合移动视觉搜索的大规模图像数据集MVSBench。它包含75500张图像,并考虑了许多变化,如视图变化,模糊,比例,照明和旋转。MVSBench是本文的另一个主要贡献,我们的方法在该数据集上也优于其他策略。
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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