基于说话人的差分能量聚类

Siham Ouamour-Sayoud, H. Sayoud
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引用次数: 0

摘要

提出并讨论了一种新的说话人聚类方法。其主要技术是利用立体声语音提供的空间信息,对切分过程结束时得到的所有同质语音片段进行分组。拟议的制度适用于发言者都在固定位置的辩论或多场会议。新方法利用由两个心形麦克风收集的两个立体声信号的差分能量,将同一说话者发出的所有语音片段分组。最后得到的分组总数应等于实际出席会议的发言者人数,每一分组应只包含一位发言者的全局发言。新提出的方法(我们称之为基于能量差分的空间聚类或EDSC)已经与经典的统计方法“单高斯顺序聚类”进行了比较实验。演讲者聚类实验在立体语音语料库DB15上进行,该语料库由15个立体场景组成,每个场景约3.5分钟。每一种情景都对应于坐在会议室固定位置的几位发言者之间的自由讨论。结果表明,该方法在精度和速度上都有较好的表现,特别是在短语音段上。
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Speaker based clustering using the differential energy
A new approach of speaker clustering is presented and discussed in this paper. The main technique consists in grouping all the homogeneous speech segments obtained at the end of the segmentation process, by using the spatial information provided by the stereophonic speech. The proposed system is suitable for debates or multi-conferences for which the speakers are located at fixed positions. The new method uses the differential energy of the two stereophonic signals collected by two cardioid microphones, in order to group all the speech segments that are uttered by the same speaker. The total number of clusters obtained at the end should be equal to the real number of speakers present in the meeting room and each cluster should contain the global intervention of only one speaker. The new proposed approach (which we called Energy Differential based Spatial Clustering or EDSC) has been experimented comparatively with a classic statistical approach called "Mono-Gaussian Sequential Clustering". Experiments of speaker clustering are done on a stereophonic speech corpus called DB15, composed of 15 stereophonic scenarios of about 3.5 minutes each. Every scenario corresponds to a free discussion between several speakers seated at fixed positions in the meeting room. Results show the strong performances of the new approach in terms of precision and speed, especially for short speech segments.
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