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ON FINDING APPROXIMATE NEAREST NEIGHBOURS IN A SET OF COMPRESSIBLE SIGNALS

机译:在一组可压缩信号中找到近似最近邻居的

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Numerous applications demand that we manipulate large sets of very high-dimensional signals. A simple yet common example is the problem of finding those signals in a database that are closest to a query. In this paper, we tackle this problem by restricting our attention to a special class of signals that have a sparse approximation over a basis or a redundant dictionary. We take advantage of sparsity to approximate quickly the distance between the query and all elements of the database. In this way, we are able to prune recursively all elements that do not match the query, while providing bounds on the true distance. Validation of this technique on synthetic and real data sets confirms that it could be very well suited to process queries over large databases of compressed signals, avoiding most of the burden of decoding.
机译:许多应用需求我们操纵大型非常高维信号。一个简单但常见的例子是在最接近查询的数据库中找到这些信号的问题。在本文中,我们通过将我们的注意力限制在基础上或冗余词典中具有稀疏近似的特殊信号来解决这个问题。我们利用稀疏性来快速近似Query与数据库的所有元素之间的距离。通过这种方式,我们能够递归地修剪与查询不匹配的所有元素,同时在真实距离上提供界限。在合成和实际数据集中验证这种技术确认它可以非常适合在压缩信号的大型数据库上处理查询,避免大部分解码负担。

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