基于增量低维嵌入的无监督听觉场景分析系统

K. Shinzato, Ryosuke Kojima
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引用次数: 0

摘要

本文研究了无监督听觉场景分析中声音的低维嵌入问题。将长时间记录映射到低维空间中进行总结是长时间环境监测的重要任务。本文提出了一种基于增量嵌入算法的低维嵌入系统。为了分析长时间的录音,我们设计了一个由录音、特征提取、低维嵌入和可视化组成的增量系统。近年来,人们对声场景的低维嵌入方法进行了研究;然而,这些方法对长时间记录的适用性还没有得到充分的评估。因此,本文描述了场景分析系统的构建,并对系统的性能进行了评价。本文重点讨论了长期监测中的两个重要观点:增量方法和噪声数据的影响。为了实现增量系统,我们使用了自组织星云生长(Self-Organizing Nebulous Growths, SONG),它可以增量地构建一个低维嵌入空间。在实验中,我们将该系统应用于噪声条件下的鸟鸣分析。通过基准数据集的初步实验,我们发现了该系统对噪声的敏感性和对环境监测的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An unsupervised auditory scene analysis system using incremental low-dimensional embedding
This paper addresses the low-dimensional embedding of sounds towards unsupervised auditory scene analysis. Summarizing long-time recordings by mapping them into lowdimensional space is an essential task in long-time environmental monitoring. In this paper, we propose a novel low-dimensional embedding system using an incremental embedding algorithm. To analyze long-time recordings, we design an incremental system consisting of recording, feature extraction, low-dimensional embedding, and visualization. Recently, many low-dimensional embedding methods for acoustic scenes have been studied; however, applicability of these methods to the long-time recording is not adequately evaluated. Thus, this paper describes the construction of the scene analysis system and evaluates the performance of this system. In this paper, we especially focus on two important viewpoints in long-time monitoring: incremental methods and effects of noisy data. To realize an incremental system, we use Self-Organizing Nebulous Growths (SONG), which can incrementally construct a low-dimensional embedding space. Also, in our experiments, we apply our system to bird song analysis under noise conditions. By the preliminary experiments using benchmark datasets, we discover noise sensitivity of our system and applicability to environmental monitoring.
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