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Approximate Search with Quantized Sparse Representations

机译:用量化稀疏表示的近似搜索

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This paper tackles the task of storing a large collection of vectors, such as visual descriptors, and of searching in it. To this end, we propose to approximate database vectors by constrained sparse coding, where possible atom weights are restricted to belong to a finite subset. This formulation encompasses, as particular cases, previous state-of-the-art methods such as product or residual quantization. As opposed to traditional sparse coding methods, quantized sparse coding includes memory usage as a design constraint, thereby allowing us to index a large collection such as the BIGANN billion-sized benchmark. Our experiments, carried out on standard benchmarks, show that our formulation leads to competitive solutions when considering different trade-offs between learning/coding time, index size and search quality.
机译:本文解决了存储大量载体的任务,例如可视描述符,并在其中搜索。为此,我们建议通过约束稀疏编码来近似数据库向量,其中可能的原子权重被限制为属于有限子集。该配方包括特定情况,以前的最先进的方法,例如产品或残留量化。与传统的稀疏编码方法相反,量化的稀疏编码包括作为设计约束的存储器使用,从而允许我们索引大型集合,例如Bigann亿尺寸的基准。我们在标准基准上进行的实验表明,我们的配方在考虑学习/编码时间,索引大小和搜索质量之间的不同权衡时会导致竞争解决方案。

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