一种基于内容的音频指纹检测鲁棒方法

Chahid Ouali, P. Dumouchel, Vishwa Gupta
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引用次数: 24

摘要

提出了一种对各种音频失真具有高度鲁棒性的音频指纹识别方法。它基于一种非常规的音频指纹生成方案。鲁棒性是通过使用基于谱值平均值的阈值对该矩阵进行修剪来生成音频信号的不同版本的谱图矩阵来实现的。我们将这个剪枝谱图矩阵的每个版本转换成二维二值图像。多个二维图像对噪声有不同程度的抑制作用。这种不同程度的噪声抑制提高了其中一个图像与参考图像匹配的可能性。为了加快匹配速度,我们将每张图像转换成一个n维向量,并基于这个n维向量执行最近邻搜索。我们在TRECVID 2010基于内容的拷贝检测评估数据集上对该方法进行了测试。实验结果表明,即使在音频失真的情况下,这种指纹识别方法也是有效的。我们将提出的方法与最先进的音频复制检测系统进行比较。对比结果表明,我们的方法在定位精度上提高了22%,并将T1和T2音频变换的最小归一化检测成本(min NDCR)降低了一半。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A robust audio fingerprinting method for content-based copy detection
This paper presents a novel audio fingerprinting method that is highly robust to a variety of audio distortions. It is based on unconventional audio fingerprints generation scheme. The robustness is achieved by generating different versions of the spectrogram matrix of the audio signal by using a threshold based on the average of the spectral values to prune this matrix. We transform each version of this pruned spectrogram matrix into a 2-D binary image. Multiple 2-D images suppress noise to a varying degree. This varying degree of noise suppression improves likelihood of one of the images matching a reference image. To speed up matching, we convert each image into an n-dimensional vector, and perform a nearest neighbor search based on this n-dimensional vector. We test this method on TRECVID 2010 content-based copy detection evaluation dataset. Experimental results show the effectiveness of such fingerprints even when the audio is distorted. We compare the proposed method to a state-of-the-art audio copy detection system. Results of this comparison show that our method achieves an improvement of 22% in localization accuracy, and lowers minimal normalized detection cost rate (min NDCR) by half for audio transformations T1 and T2.
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