An Edge Distortion and CNN-Based Analysis of Blind IQ

Q4 Mathematics Philippine Statistician Pub Date : 2022-03-31 DOI:10.17762/msea.v71i2.78
Movva. Rajesh Babu, Kontham. Raja Kumar
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Abstract

This paper is for assessing the image quality (IQ) without using an authentic image (original image) which is a type of Blind IQ Assessment (BIQA) model by introducing a technique of Convolutional Neural Network (CNN). The distortions of edges in the image are considered as features to represent the image feature vector. This approach is justified by the evidence that the subjective evaluation concentrates on image characteristics that radiate from the boundaries and edges that exist with in the image. It was identified in the prior methods that the features are extracted at the time of training or before training by applying sophisticated transformations on the image. In this work, the vertical along with horizontal edge feature maps of the training images are extracted by means of Scharr Kernel (SK) approach. These edge maps subsequently fed into a CNN, which uses non-linear transformations to bring out higher-level features. Regression is then used to link the generated features to the IQ score. To accommodate different sizes of input images, the SPP (Spatial Pyramid Pooling) layer is used in this network. The developed model was evaluated using well-known datasets in the field of IQA. The suggested model's performance reveals that it outperforms previously existing models in context of negligible complexity involvement and feature extraction simplicity.
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基于cnn的盲人智商边缘失真分析
本文通过引入卷积神经网络(CNN)技术,在不使用真实图像(原始图像)的情况下评估图像质量(IQ),真实图像是一种盲IQ评估(BIQA)模型。图像中边缘的失真被认为是表示图像特征向量的特征。这种方法是合理的,因为有证据表明,主观评估集中于从图像中存在的边界和边缘辐射出来的图像特征。在现有方法中,通过对图像应用复杂的变换,在训练时或训练前提取特征。在这项工作中,通过沙尔核(SK)方法提取了训练图像的垂直和水平边缘特征图。这些边缘图随后被输入CNN,CNN使用非线性变换来呈现更高级别的特征。然后使用回归将生成的特征与IQ分数联系起来。为了适应不同大小的输入图像,在该网络中使用SPP(空间金字塔池)层。使用IQA领域的知名数据集对所开发的模型进行了评估。所提出的模型的性能表明,在可忽略的复杂性和特征提取的简单性方面,它优于先前存在的模型。
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来源期刊
Philippine Statistician
Philippine Statistician Mathematics-Statistics and Probability
CiteScore
0.50
自引率
0.00%
发文量
92
期刊介绍: The Journal aims to provide a media for the dissemination of research by statisticians and researchers using statistical method in resolving their research problems. While a broad spectrum of topics will be entertained, those with original contribution to the statistical science or those that illustrates novel applications of statistics in solving real-life problems will be prioritized. The scope includes, but is not limited to the following topics:  Official Statistics  Computational Statistics  Simulation Studies  Mathematical Statistics  Survey Sampling  Statistics Education  Time Series Analysis  Biostatistics  Nonparametric Methods  Experimental Designs and Analysis  Econometric Theory and Applications  Other Applications
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