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Learning Binary Codes for High-Dimensional Data Using Bilinear Projections

机译:使用双线性投影学习高维数据的二进制代码

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Recent advances in visual recognition indicate that to achieve good retrieval and classification accuracy on large-scale datasets like ImageNet, extremely high-dimensional visual descriptors, e.g., Fisher Vectors, are needed. We present a novel method for converting such descriptors to compact similarity-preserving binary codes that exploits their natural matrix structure to reduce their dimensionality using compact bilinear projections instead of a single large projection matrix. This method achieves comparable retrieval and classification accuracy to the original descriptors and to the state-of-the-art Product Quantization approach while having orders of magnitude faster code generation time and smaller memory footprint.
机译:视觉识别的最新进展表明,为了实现大规模数据集的良好检索和分类准确性,如想象人,非常高维的视觉描述符,例如Fisher vector。我们介绍了一种用于将这样的描述符转换为紧凑的相似性保存二进制代码的新方法,该方法利用它们的天然矩阵结构来使用紧凑的双线性投影来减少其维度,而不是单个大投影矩阵。该方法可与原始描述符和最先进的产品量化方法实现了可比的检索和分类精度,同时具有更快的代码生成时间和更小的内存占用的序列。

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