基于预测模型的主观字幕质量评价模拟

Somang Nam, D. Fels
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引用次数: 2

摘要

聋哑人或重听人(D/HOH)作为一个主要的用户群体,使用CC (Closed字幕)服务通过阅读文本来欣赏有音频的电视节目。然而,尽管政府监管部门对CC的质量因素进行了一定的规定,但D/ h社区对CC的质量并不完全满意。CC质量的衡量通常被解释为翻译的准确性,监管机构使用经验模型来评估。主观质量量表的需求来自于当前经验评估模型与受众感知质量之间的差距。有可能通过纳入D/HOH受众的主观评价来填补这一空白。本研究提出了一种能够预测D/HOH观众主观评分的CC自动质量评估系统的设计。在文献研究的基础上,实现了一种模拟评估器,并提出了CC品质因子代表值提取算法。使用一组CC质量值和相应的评级分数训练三种预测模型,然后对它们进行比较,找出可行的预测模型。
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Simulation of Subjective Closed Captioning Quality Assessment Using Prediction Models
As a primary user group, Deaf or Hard of Hearing (D/HOH) audiences use Closed Captioning (CC) service to enjoy the TV programs with audio by reading text. However, the D/HOH communities are not completely satisfied with the quality of CC even though the government regulators entail certain rules in the CC quality factors. The measure of the CC quality is often interpreted as an accuracy on translation and regulators use the empirical models to assess. The need of a subjective quality scale comes from the gap in between current empirical assessment models and the audience perceived quality. It is possible to fill the gap by including the subjective assessment by D/HOH audiences. This research proposes a design of an automatic quality assessment system for CC which can predict the D/HOH audience subjective ratings. A simulated rater is implemented based on literature and the CC quality factor representative value extraction algorithm is developed. Three prediction models are trained with a set of CC quality values and corresponding rating scores, then they are compared to find the feasible prediction model.
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