Representation Learning for the Automatic Indexing of Sound Effects Libraries

Alison B. Ma, Alexander Lerch
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Abstract

Labeling and maintaining a commercial sound effects library is a time-consuming task exacerbated by databases that continually grow in size and undergo taxonomy updates. Moreover, sound search and taxonomy creation are complicated by non-uniform metadata, an unrelenting problem even with the introduction of a new industry standard, the Universal Category System. To address these problems and overcome dataset-dependent limitations that inhibit the successful training of deep learning models, we pursue representation learning to train generalized embeddings that can be used for a wide variety of sound effects libraries and are a taxonomy-agnostic representation of sound. We show that a task-specific but dataset-independent representation can successfully address data issues such as class imbalance, inconsistent class labels, and insufficient dataset size, outperforming established representations such as OpenL3. Detailed experimental results show the impact of metric learning approaches and different cross-dataset training methods on representational effectiveness.
声音效果库自动索引的表示学习
标记和维护商业声音效果库是一项耗时的任务,因为数据库的规模不断增长,并且分类法不断更新。此外,声音搜索和分类法的创建因不统一的元数据而变得复杂,即使引入了新的行业标准——通用分类系统(Universal Category System),这也是一个难以解决的问题。为了解决这些问题并克服抑制深度学习模型成功训练的数据集依赖限制,我们追求表示学习来训练广义嵌入,这种嵌入可用于各种声音效果库,并且是一种与分类无关的声音表示。我们表明,特定于任务但独立于数据集的表示可以成功地解决数据问题,如类不平衡、不一致的类标签和数据集大小不足,优于OpenL3等已建立的表示。详细的实验结果显示了度量学习方法和不同的跨数据集训练方法对表征有效性的影响。
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