Exploring Music Similarity through Siamese CNNs using Triplet Loss on Music Samples

Gibran Kasif, comGanesha Thondilege
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Abstract

In the rapidly evolving digital music landscape, identifying similarities between musical pieces is essential to help musicians avoid unintended copyright infringement and maintain the originality of their work. However, detecting such similarities remains a complex and computationally challenging problem. A novel approach to address this issue is a song similarity detection system that utilizes a Siamese Convolutional Neural Network (CNN) with Triplet Loss for effective audio input comparison. The model is trained on a custom dataset from WhoSampled, an extensive database of information on sampled music, cover songs, and remixes. The dataset comprises pairs of audio samples and interpolations, making it suitable for the Siamese CNN approach. Incorporating Triplet Loss enhances the model’s performance by learning discriminative features for improved comparison. The performance of this system is assessed using a confidence interval-based metric, achieving a 96.86% accuracy at a 99.7% confidence level in determining the similarity between music samples. The solution provides a helpful tool for musicians to actively compare their creations with existing songs, helping to reduce the likelihood of unintentional plagiarism and possible legal issues.
利用音乐样本上的三连音损失,通过Siamese cnn探索音乐相似性
在快速发展的数字音乐领域,识别音乐作品之间的相似之处对于帮助音乐家避免意外的版权侵权并保持其作品的原创性至关重要。然而,检测这种相似性仍然是一个复杂且具有计算挑战性的问题。一种解决这一问题的新方法是一种歌曲相似度检测系统,该系统利用带有三重损失的暹罗卷积神经网络(CNN)进行有效的音频输入比较。该模型是在来自whoosample的自定义数据集上训练的,whoosample是一个关于采样音乐、翻唱歌曲和混音的广泛信息数据库。该数据集包含成对的音频样本和插值,使其适合于Siamese CNN方法。结合三重损失通过学习判别特征来提高模型的性能,以改进比较。该系统的性能使用基于置信区间的指标进行评估,在确定音乐样本之间的相似性方面,在99.7%的置信水平上实现了96.86%的准确率。该解决方案为音乐家提供了一个有用的工具,可以主动将他们的创作与现有歌曲进行比较,有助于减少无意剽窃的可能性和可能的法律问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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