OpenEAR — Introducing the munich open-source emotion and affect recognition toolkit

F. Eyben, M. Wöllmer, Björn Schuller
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引用次数: 421

Abstract

Various open-source toolkits exist for speech recognition and speech processing. These toolkits have brought a great benefit to the research community, i.e. speeding up research. Yet, no such freely available toolkit exists for automatic affect recognition from speech. We herein introduce a novel open-source affect and emotion recognition engine, which integrates all necessary components in one highly efficient software package. The components include audio recording and audio file reading, state-of-the-art paralinguistic feature extraction and plugable classification modules. In this paper we introduce the engine and extensive baseline results. Pre-trained models for four affect recognition tasks are included in the openEAR distribution. The engine is tailored for multi-threaded, incremental on-line processing of live input in real-time, however it can also be used for batch processing of databases.
OpenEAR -介绍慕尼黑开源情感和情感识别工具包
存在各种用于语音识别和语音处理的开源工具包。这些工具包给研究界带来了很大的好处,即加快了研究速度。然而,目前还没有这样的免费工具来自动识别语音中的情感。本文介绍了一种新的开源情感和情感识别引擎,该引擎将所有必要的组件集成在一个高效的软件包中。这些组件包括音频记录和音频文件读取、最先进的副语言特征提取和可插拔分类模块。在本文中,我们介绍了引擎和广泛的基线结果。openEAR分布中包含四种影响识别任务的预训练模型。该引擎是为多线程、实时增量在线处理实时输入而定制的,但是它也可以用于数据库的批处理。
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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