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Matrix Factorization-based clustering of image features for bandwidth-constrained information retrieval

机译:基于矩阵分解的群体的图像特征,用于带宽约束的信息检索

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We consider the problem of accurately and efficiently querying a remote server to retrieve information about images captured by a mobile device. In addition to reduced transmission overhead and computational complexity, the retrieval protocol should be robust to variations in the image acquisition process, such as translation, rotation, scaling, and sensor-related differences. We propose to extract scale-invariant image features and then perform clustering to reduce the number of features needed for image matching. Principal Component Analysis (PCA) and Non-negative Matrix Factorization (NMF) are investigated as candidate clustering approaches. The image matching complexity at the database server is quadratic in the (small) number of clusters, not in the (very large) number of image features. We employ an image-dependent information content metric to approximate the model order, i.e., the number of clusters, needed for accurate matching, which is preferable to setting the model order using trial and error. We show how to combine the hypotheses provided by PCA and NMF factor loadings, thereby obtaining more accurate retrieval than using either approach alone. In experiments on a database of urban images, we obtain a top-1 retrieval accuracy of 89% and a top-3 accuracy of 92.5%.
机译:我们考虑准确和有效地查询远程服务器以检索由移动设备捕获的图像的信息的问题。除了减少传输开销和计算复杂性之外,检索协议应该是稳健的,对图像采集过程的变化,例如翻译,旋转,缩放和传感器相关的差异。我们建议提取尺度不变的图像特征,然后执行群集以减少图像匹配所需的功能数量。作为候选聚类方法调查了主成分分析(PCA)和非负矩阵分解(NMF)。数据库服务器的图像匹配复杂性在(小)群集中是二次的,而不是在(非常大)的图像特征中。我们使用图像依赖性信息内容度量来近似于准确匹配所需的模型顺序,即群集数,这是使用试验和错误设置模型顺序的。我们展示了如何组合PCA和NMF因子负载提供的假设,从而获得比单独使用任何一种方法更准确的检索。在城市形象数据库的实验中,我们获得了89%的前1个检索精度,最高3个精度为92.5%。

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