Computer Vision for Music Identification: Video Demonstration

Yan Ke, Derek Hoiem, R. Sukthankar
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引用次数: 8

Abstract

This paper describes a demonstration video for our music identification system. The goal of music identification is to reliably recognize a song from a small sample of noisy audio. This problem is challenging because the recording is often corrupted by noise and because the audio sample will only match a small portion of the target song. Additionally, a practical music identification system should scale (in both accuracy and speed) to databases containing hundreds of thousands of songs. Recently, the music identification problem has attracted considerable attention. However, the task remains unsolved, particularly for noisy real-world queries. We cast music identification into an equivalent sub-image retrieval framework: identify the portion of a spectrogram image from the database that best matches a given query snippet. Our approach treats the spectrogram of each music clip as a 2D image and transforms music identification into a corrupted sub-image retrieval problem.
音乐识别的计算机视觉:视频演示
本文介绍了我们的音乐识别系统的演示视频。音乐识别的目标是从嘈杂音频的小样本中可靠地识别出一首歌。这个问题是具有挑战性的,因为录音经常被噪音破坏,因为音频样本只匹配目标歌曲的一小部分。此外,一个实用的音乐识别系统应该(在准确性和速度上)扩展到包含数十万首歌曲的数据库。近年来,音乐识别问题引起了人们的广泛关注。然而,这个任务仍然没有解决,特别是对于嘈杂的现实世界查询。我们将音乐识别转换为等效的子图像检索框架:从数据库中识别与给定查询片段最匹配的谱图图像部分。我们的方法将每个音乐片段的频谱图视为二维图像,并将音乐识别转换为损坏的子图像检索问题。
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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