语音和图像的综合分析作为一个概率解码过程

S. Wachsmuth, G. Sagerer
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引用次数: 5

摘要

言语理解和视觉是人类交流中最重要的两种方式。然而,由于嘈杂的数据、模糊的含义、以前未见过的物体或未听过的单词、闭塞、自发的语音效果和上下文依赖,计算机对这些内容的模拟面临着根本的困难。因此,两个通道上的解释过程都非常容易出错。本文提出了一个新的视角,将语音和图像的解释作为一个概率解码过程。结果表明,这种积分方案对于部分解释或错误解释具有鲁棒性。此外,研究还表明,可以在该概率框架中制定隐式纠错策略,从而改进场景解释。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated analysis of speech and images as a probabilistic decoding process
Speech understanding and vision are the two most important modalities in human-human communication. However, the emulation of these by a computer faces fundamental difficulties due to noisy data, vague meanings, previously unseen objects or unheard words, occlusions, spontaneous speech effects, and context dependence. Thus, the interpretation processes on both channels are highly error-prone. This paper presents a new perspective on the problem of relating speech and image interpretations as a probabilistic decoding process. It is shown that such an integration scheme is robust regarding partial or erroneous interpretations. Furthermore, it is shown that implicit error correction strategies can be formulated in this probabilistic framework that lead to improved scene interpretation.
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