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Audio retrieval based on manifold ranking and relevance feedback

机译:基于流形排序和相关性反馈的音频检索

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摘要

An audio information retrieval model based on Manifold Ranking (MR) is proposed, and ranking results are improved using a Relevance Feedback (RF) algorithm. Timbre components are employed as the model???s main feature. To compute timbre similarity, extracting the spectrum features for each frame is necessary; the large set of frames is clustered using a Gaussian Mixture Model (GMM) and expectation maximization. The typical spectra frame from GMM is drawn as data points, and MR assigns each data point a relative ranking score, which is treated as a distance instead of as traditional similarity metrics based on pair-wise distance. Furthermore, the MR algorithm can be easily generalized by adding positive and negative examples from the RF algorithm and improves the final result. Experimental results show that the proposed approach effectively improves the ranking capabilities of existing distance functions.
机译:提出了基于流形排序(MR)的音频信息检索模型,并使用相关反馈(RF)算法提高了排序结果。音色组件被用作模型的主要特征。要计算音色相似度,必须提取每帧的频谱特征。大帧集使用高斯混合模型(GMM)和期望最大化进行聚类。来自GMM的典型光谱帧被绘制为数据点,而MR为每个数据点分配一个相对排名得分,该得分被视为距离,而不是基于成对距离的传统相似性度量。此外,通过添加来自RF算法的正例和负例,可以轻松地概括MR算法,并改善最终结果。实验结果表明,该方法有效地提高了现有距离函数的排序能力。

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