A neural network based technique is proposed to estimate subjective quality of stereoscopic videos. Moreover, to utilize this model for applications where availability of reference signal is not possible to receiver, it applies objective quality of video with minimum dependency on reference signal. This paper presents fast, accurate and consistent subjective quality estimation. Feasibility and accuracy of the proposed technique is thoroughly analyzed with extensive subjective experiments and simulations. Results illustrate that performance measure of 92.3% in subjective quality estimation can be achieved with the proposed technique.</p
The research of stereoscopic video quality assessment (SVQA) plays an important role for promoting t...
Stereoscopic imaging is becoming increasingly popular. However, to ensure the best quality of experi...
In this paper, we present the video quality measure estimation via a neural network. This latter pre...
A neural network based technique is proposed to estimate subjective quality of stereoscopic videos. ...
Perceived visual quality in stereoscopic videos incorporates attributes from production, compression...
In this paper, we propose a no-reference stereoscopic video quality assessment (NR-SVQA) method base...
Abstract—This paper describes an application of neural networks in the field of objective measuremen...
This paper proposes a novel method for video quality evaluation based on machine learning technique....
A method for estimating subjective quality score of 3D stereoscopic video is proposed which is base...
Learning a deep structure representation for complex information networks is a vital research area, ...
ABSTRACT: The measurement and evaluation of the QoE (Quality of Experience) have become one of the m...
We propose a supervised no-reference (NR) quality assessment algorithm for assessing the perceptual ...
The goal of objective stereoscopic image quality assessment (SIQA) is to predict the human perceptua...
The measurement and evaluation of the QoE (Quality of Experience) have become one of the main focuse...
AbstractImage/Video Quality Assessment (IQA/VQA) plays a significant role in image and video process...
The research of stereoscopic video quality assessment (SVQA) plays an important role for promoting t...
Stereoscopic imaging is becoming increasingly popular. However, to ensure the best quality of experi...
In this paper, we present the video quality measure estimation via a neural network. This latter pre...
A neural network based technique is proposed to estimate subjective quality of stereoscopic videos. ...
Perceived visual quality in stereoscopic videos incorporates attributes from production, compression...
In this paper, we propose a no-reference stereoscopic video quality assessment (NR-SVQA) method base...
Abstract—This paper describes an application of neural networks in the field of objective measuremen...
This paper proposes a novel method for video quality evaluation based on machine learning technique....
A method for estimating subjective quality score of 3D stereoscopic video is proposed which is base...
Learning a deep structure representation for complex information networks is a vital research area, ...
ABSTRACT: The measurement and evaluation of the QoE (Quality of Experience) have become one of the m...
We propose a supervised no-reference (NR) quality assessment algorithm for assessing the perceptual ...
The goal of objective stereoscopic image quality assessment (SIQA) is to predict the human perceptua...
The measurement and evaluation of the QoE (Quality of Experience) have become one of the main focuse...
AbstractImage/Video Quality Assessment (IQA/VQA) plays a significant role in image and video process...
The research of stereoscopic video quality assessment (SVQA) plays an important role for promoting t...
Stereoscopic imaging is becoming increasingly popular. However, to ensure the best quality of experi...
In this paper, we present the video quality measure estimation via a neural network. This latter pre...