会议专题

IMAGE QUALITY ASSESSING BY USING NN AND SVM

In the correlative curve of image subjective and objective quality assessing, there are some points that lower the performance of image quality assessing model. In this paper,the concept of isolated points was given and isolated points predicting was also illuminated. A new model was given based on NN-Neural Network and SVM-Support Vector Machines with PSNR and SSIM-Structure Similarity, which were used as two indexes describing image quality. NN was used to obtain the mapping functions between objective quality assessing indexes and subjective quality assessing value. SVM was used to classify the images into different types. Then the images were accessed by using different mapping functions.The number of isolated points was reduced in the correlative curve of the new model. The results from simulation experiment showed the model was effective. The monotony of the model is 6.94% higher than PSNR and RMSE-root mean square error is 35.90% higher than PSNR.

Neural network Support vector machines Image quality assessing PSNR

YU-BING TONG QING CHANG QI-SHAN ZHANG

School of Electronics and Information Engineering, Beihang University, Beijing 100083, China

国际会议

2006 International Conference on Machine Learning and Cybernetics(IEEE第五届机器学习与控制论坛)

大连

英文

3987-3990

2006-08-13(万方平台首次上网日期,不代表论文的发表时间)