英文摘要 |
Automatic scoring system is the current trend for large scale assessment. Automatic scoring system has became a popular research tool in the field of educational assessment, curriculum teaching and psychological measurement. In this work, we employ behavioral signal processing (BSP)-based methodology to develop a computational framework that can automate the scoring process of pre-service school principals' oral presentations given at the yearly training program. Using the audio-video feature extraction approach with session-level representation techniques based on bag-ofword and Fisher-vector encoding, we can then characterize each pre-service school principal's multimodal behavior during an impromptu speech examination for automatic scoring. For the future study, we will include lexical content and annotation; collect more samples and raters which could potentiallyimprove the accuracy of this system. |