基于自组织子单元的视频符号识别

Britta Bauer, K. Kraiss
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引用次数: 83

摘要

本文研究了德语符号的自动识别问题。统计方法是基于最小错误率的贝叶斯决策规则。下面的语音识别系统设计,一般是基于音素的,这里概述了使用亚单位而不是整个符号模型的自动手语识别系统的想法。这种制度的优点是将来减少必要的训练材料。此外,期望简化现有词汇表的扩展,因为新符号可以添加到词汇库中,而无需重新训练子单元的现有隐马尔可夫模型(hmm)。由于很难定义手语的子单位,这种方法采用完全自组织的子单位。在最初的经验中,对100个先前训练过的符号的识别准确率达到了92.5%。在未对亚单位hmm进行再训练的情况下,对50个新体征的准确率达到81%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Video-based sign recognition using self-organizing subunits
This paper deals with the automatic recognition of German signs. The statistical approach is based on the Bayes decision rule for minimum error rate. Following speech recognition system designs, which are in general based on phonemes, here the idea of an automatic sign language recognition system using subunits rather than models for whole signs is outlined. The advantage of such a system will be a future reduction of necessary training material. Furthermore, a simplified enlargement of the existing vocabulary is expected, as new signs can be added to the vocabulary database without re-training the existing hidden Markov models (HMMs) for subunits. Since it is difficult to define subunits for sign language, this approach employs totally self-organized subunits. In first experiences a recognition accuracy of 92,5% was achieved for 100 signs, which were previously trained. For 50 new signs an accuracy of 81% was achieved without retraining of subunit-HMMs.
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