Title :
Robustness and prediction accuracy of Machine Learning for objective visual quality assessment
Author :
Hines, Andrew ; Kendrick, Paul ; Barri, Adriaan ; Narwaria, Manish ; Redi, Judith A.
Author_Institution :
Trinity Coll. Dublin, Dublin, Ireland
Abstract :
Machine Learning (ML) is a powerful tool to support the development of objective visual quality assessment metrics, serving as a substitute model for the perceptual mechanisms acting in visual quality appreciation. Nevertheless, the reliability of ML-based techniques within objective quality assessment metrics is often questioned. In this study, the robustness of ML in supporting objective quality assessment is investigated, specifically when the feature set adopted for prediction is suboptimal. A Principal Component Regression based algorithm and a Feed Forward Neural Network are compared when pooling the Structural Similarity Index (SSIM) features perturbed with noise. The neural network adapts better with noise and intrinsically favours features according to their salient content.
Keywords :
feedforward neural nets; image processing; learning (artificial intelligence); principal component analysis; regression analysis; ML-based techniques; SSIM features; feature set; feed forward neural network; objective visual quality assessment metrics; perceptual mechanisms; prediction accuracy; principal component regression based algorithm; salient content; structural similarity index features; substitute model; visual quality appreciation; Image quality; Noise; Noise level; Noise measurement; Quality assessment; Sensitivity; SSIM; image quality assessment; machine learning; neural networks;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2014 Proceedings of the 22nd European
Conference_Location :
Lisbon