Early detection, diagnosis and intervention services for children with autism spectrum disorder across europe according to the gross domestic product

A. Bejarano-Martin, R. Canal-Bedia,M. Magan-Maganto, C. Fernandez-Alvarez,M. V. Martin-Cilleros,M. C. Sanchez-Gomez, P. Garcia-Primo, M. Rose-Sweeney, A. Boilson, R. Linertova,H. Roeyers, S. Van der Paelt,D. Schendel, C. Warberg, S. Cramer,A. Narzisi,F. Muratori, M. L. Scatonni, I. Moilanen, A. Yliherva, E. Saemundsen, S. L. Jonsdottir, M. Efrim-Budisteanu,A. Arghir,S. Mihaela Papuc,A. Vicente, C. Rasga,B. Roge,Q. Guillon, S. Baduel,J. Xenia Kafka,O. Kothgassner,L. Poustka, R. Kawa,E. Pisula, T. Sellers,M. Posada de la Paz

European Neuropsychopharmacology(2021)

引用 0|浏览2
暂无评分
摘要
In this paper we propose a fuzzy detection and reduction method for impulse noise in colour images. Detection is based on the fuzzyfication of a well-known statistic called ROD. The noise degrees obtained are used to reduce impulses by employing a fuzzy averaging between the input colour vector and a robust estimate of noise-free colour vector within the input neighbourhood. Fuzzy averaging has some advantages in terms of both noise reduction and detail preservation in front of detect and replace approaches because of threshold based decisions of the latter. However, robustness of the former is lower. We solve this problem by including a correction mechanism that checks the fuzzy noise degree of the output and replaces it with a robust colour vector either when noise has not been properly reduced or when a colour artefact has been introduced. We carry out a thorough study of the method parameter setting and give a convenient and robust setting. Experimental results show that our approach is very robust in front of four different types of impulse noise.
更多
查看译文
关键词
autism spectrum disorder,intervention services,early detection,diagnosis,children
AI 理解论文
溯源树
样例
生成溯源树,研究论文发展脉络
Chat Paper
正在生成论文摘要