计算机科学
局部敏感散列
散列函数
图像检索
模式识别(心理学)
核(代数)
特征向量
嵌入
人工智能
汉明距离
地点
最近邻搜索
相似性(几何)
核方法
数据挖掘
图像(数学)
哈希表
支持向量机
算法
数学
语言学
组合数学
哲学
计算机安全
作者
Brian Kulis,Kristen Grauman
标识
DOI:10.1109/tpami.2011.219
摘要
Fast retrieval methods are critical for many large-scale and data-driven vision applications. Recent work has explored ways to embed high-dimensional features or complex distance functions into a low-dimensional Hamming space where items can be efficiently searched. However, existing methods do not apply for high-dimensional kernelized data when the underlying feature embedding for the kernel is unknown. We show how to generalize locality-sensitive hashing to accommodate arbitrary kernel functions, making it possible to preserve the algorithm's sublinear time similarity search guarantees for a wide class of useful similarity functions. Since a number of successful image-based kernels have unknown or incomputable embeddings, this is especially valuable for image retrieval tasks. We validate our technique on several data sets, and show that it enables accurate and fast performance for several vision problems, including example-based object classification, local feature matching, and content-based retrieval.
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