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Learning binary code via PC A of angle projection for image retrieval

机译:通过角度投影的PC A学习二进制代码以进行图像检索

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With benefits of low storage costs and high query speeds, binary code representation methods are widely researched for efficiently retrieving large-scale data. In image hashing method, learning hashing function to embed high-dimensions feature to Hamming space is a key step for accuracy retrieval. Principal component analysis (PCA) technical is widely used in compact hashing methods, and most these hashing methods adopt PCA projection functions to project the original data into several dimensions of real values, and then each of these projected dimensions is quantized into one bit by thresholding. The variances of different projected dimensions are different, and with real-valued projection produced more quantization error. To avoid the real-valued projection with large quantization error, in this paper we proposed to use Cosine similarity projection for each dimensions, the angle projection can keep the original structure and more compact with the Cosine-valued. We used our method combined the ITQ hashing algorithm, and the extensive experiments on the public CIFAR-10 and Caltech-256 datasets validate the effectiveness of the proposed method.
机译:利用低存储成本和高查询速度的优点,二进制代码表示方法被广泛研究以有效地检索大规模数据。在图像哈希方法中,学习哈希函数以将高维特征嵌入汉明空间是准确检索的关键步骤。主成分分析(PCA)技术广泛用于紧凑型哈希方法中,并且大多数这些哈希方法都采用PCA投影功能将原始数据投影到多个实值维中,然后通过阈值将这些投影维中的每一个量化为一位。不同投影尺寸的方差是不同的,并且使用实值投影会产生更多的量化误差。为了避免具有大量化误差的实值投影,本文提出对每个尺寸使用余弦相似度投影,角度投影可以保持原始结构,并且在余弦值的情况下更紧凑。我们使用结合了ITQ哈希算法的方法,在公共CIFAR-10和Caltech-256数据集上进行的广泛实验验证了该方法的有效性。

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