基于内容的语音注释数字图像检索方法

K. Sankaran, K. Kavitha, S. Priya
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引用次数: 0

摘要

本文提出了一种基于音节转换的类图片样本语音笔记的数字图片索引检索系统。越来越多的客户在他们的电脑里有大量的数字图像,包括光泽和检索,数码相机的声誉不断提高,这已经成为管理虚拟照片的关键问题。通常情况下,客户必须手动输入这些高级内容,并反复对他们的快照进行评论。利用多维尺度识别n个最优用户来处理识别误差,并将其转化为类图像样本。尽管在大多数虚拟相机中集成了麦克风,消费者现在可以在现场清晰地说出他们的照片,并将这些观察记录到机器可读的文档中。近年来,在语音自动识别技术中,语音光泽度和检索为现有的照片排序、恢复方法和替代手工书写的重复性工作提供了一种可选择和可预测的策略。在语音标注和检索中,采用了一种混合机制来吸收类图样式、音节、单词和字符。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Content Based Image Retrieval Process for Speech Annotated Digital Images
In this paper, a new indexing and retrieval system for digital pictures has been presented with speech notes based on syllable-converted picture-like samples. The growth in reputation of digital camera spots in the direction of growing number of customers with huge album of digital images in their computers which includes gloss and retrieval, has become known as vital trouble in management of virtual photographs. Usually, customers must type such advanced content manually and repetitively to comment on their snap shots. Multidimensional scaling is used to identify n-best users to deal with recognition errors and is converted into an image-like sample. Though the availability of an integrated microphone in maximum virtual cameras, consumer can now articulate about their pictures onto the spot and records these observations into machine readable documents. Recently in automatic voice recognition technology, speech gloss and retrieval gives an option and predictable strategy for existing photograph ordering, recovery methods and supplanting the repetitive work of manual writing. In speech annotation and retrieval, a hybrid mechanism is utilized to assimilate picture-like styles, syllables, words and characters.
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