The research of stereoscopic video quality assessment (SVQA) plays an important role for promoting the development of stereoscopic video system. Existing SVQA metrics rely on hand-crafted features, which is inaccurate and time-consuming because of the diversity and complexity of stereoscopic video distortion. This paper introduces a 3D convolutional neural networks (CNN) based SVQA framework that can model not only local spatio-temporal information but also global temporal information with cubic difference video patches as input. First, instead of using hand-crafted features, we design a 3D CNN architecture to automatically and effectively capture local spatio-temporal features. Then we employ a quality score fusion strategy considering glo...
International audienceDeep learning-based quality metrics have recently given significant improvemen...
© 1999-2012 IEEE. Panoramic video and stereoscopic panoramic video are essential carriers of virtual...
With the consideration that incorporating visual saliency information appropriately can benefit imag...
We present a novel framework called Deep Video QUality Evaluator (DeepVQUE) for full-reference video...
Most of the existing 3D video quality assessment (3D-VQA/SVQA) methods only consider spatial informa...
Deep learning-based quality metrics have recently given significant improvement in Image Quality Ass...
In this paper, we propose a no-reference stereoscopic video quality assessment (NR-SVQA) method base...
We propose a supervised no-reference (NR) quality assessment algorithm for assessing the perceptual ...
We propose a full reference stereo video quality assessment algorithm for assessing the perceptual q...
In this paper, we propose a full reference Stereoscopic Video Quality Assessment (SVQA) algorithm ba...
Globally almost 17 exabytes of mobile data is used every month. Almost 10 exabytes of this data is ...
With the popularity of video technology, stereoscopic video quality assessment (SVQA) has become inc...
In this paper, we propose a full reference Stereoscopic Video Quality Assessment (SVQA) algorithm ba...
Stereoscopic video quality assessment (SVQA) is a challenging problem. It has not been well investig...
Learning a deep structure representation for complex information networks is a vital research area, ...
International audienceDeep learning-based quality metrics have recently given significant improvemen...
© 1999-2012 IEEE. Panoramic video and stereoscopic panoramic video are essential carriers of virtual...
With the consideration that incorporating visual saliency information appropriately can benefit imag...
We present a novel framework called Deep Video QUality Evaluator (DeepVQUE) for full-reference video...
Most of the existing 3D video quality assessment (3D-VQA/SVQA) methods only consider spatial informa...
Deep learning-based quality metrics have recently given significant improvement in Image Quality Ass...
In this paper, we propose a no-reference stereoscopic video quality assessment (NR-SVQA) method base...
We propose a supervised no-reference (NR) quality assessment algorithm for assessing the perceptual ...
We propose a full reference stereo video quality assessment algorithm for assessing the perceptual q...
In this paper, we propose a full reference Stereoscopic Video Quality Assessment (SVQA) algorithm ba...
Globally almost 17 exabytes of mobile data is used every month. Almost 10 exabytes of this data is ...
With the popularity of video technology, stereoscopic video quality assessment (SVQA) has become inc...
In this paper, we propose a full reference Stereoscopic Video Quality Assessment (SVQA) algorithm ba...
Stereoscopic video quality assessment (SVQA) is a challenging problem. It has not been well investig...
Learning a deep structure representation for complex information networks is a vital research area, ...
International audienceDeep learning-based quality metrics have recently given significant improvemen...
© 1999-2012 IEEE. Panoramic video and stereoscopic panoramic video are essential carriers of virtual...
With the consideration that incorporating visual saliency information appropriately can benefit imag...