Ensembling Convolutional Neural Networks for Perceptual Image Quality Assessment

被引:7
|
作者
Ahmed, Nisar [1 ]
Asif, Hafiz Muhammad Shahzad [2 ]
机构
[1] Univ Engn & Technol Lahore, Dept Comp Engn, Lahore, Pakistan
[2] Univ Engn & Technol Lahore, Dept Comp Sci, Lahore, Pakistan
关键词
deep learning; ensemble learning; convolutional neural networks; image quality assessment; no-reference image quality assessment;
D O I
10.1109/macs48846.2019.9024822
中图分类号
TP301 [理论、方法];
学科分类号
081202 ;
摘要
Perceptual Image quality assessment is a challenging problem especially in the absence of reference information. No-reference quality assessment is required for a number of applications such as quality assessment of image acquisition, enhancement and communication scenarios. Conventionally the problem is addressed by extracting natural scene statistics but recent development of deep learning has paved the way of deep learning based methods. Convolutional Neural Networks (CNN) has shown surprising performance for the task of visual classification but they have some inherent limitations such as high computational requirements, limitations of scalability and model variance. Ensemble learning methods are used to improve the generalization performance of machine learning methods but their application to CNN is limited due to their already high computational requirements. We have proposed an approach to train a single CNN model with a learning rate scheduler and save its training states at regular intervals. These saved model states are treated as base models and some of them are selected to construct ensemble with weighted averaging. The proposed methods has provided promising results and indicate its utility for training of advanced architectures for ensemble learning.
引用
收藏
页数:5
相关论文
共 50 条
  • [31] No-reference image quality assessment by using convolutional neural networks via object detection
    Jingchao Cao
    Wenhui Wu
    Ran Wang
    Sam Kwong
    International Journal of Machine Learning and Cybernetics, 2022, 13 : 3543 - 3554
  • [32] Blind Stereoscopic Image Quality Assessment Using Convolutional Neural Networks and Support Vector Regression
    Chetouani, Aladine
    El Hassouni, Mohammed
    Jennane, Rachid
    9TH INTERNATIONAL SYMPOSIUM ON SIGNAL, IMAGE, VIDEO AND COMMUNICATIONS (ISIVC 2018), 2018, : 152 - 156
  • [33] Deep Convolutional Neural Networks Improve Vein Image Quality
    Kashihara, Koji
    2016 17TH IEEE INTERNATIONAL SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE AND INFORMATICS (CINTI 2016), 2016, : 209 - 212
  • [34] Image quality assessment by using neural networks
    Carrai, P
    Heynderickx, I
    Gastaldo, P
    Zunino, R
    2002 IEEE INTERNATIONAL SYMPOSIUM ON CIRCUITS AND SYSTEMS, VOL V, PROCEEDINGS, 2002, : 253 - 256
  • [35] Image Aesthetics Assessment Using Fully Convolutional Neural Networks
    Apostolidis, Konstantinos
    Mezaris, Vasileios
    MULTIMEDIA MODELING (MMM 2019), PT I, 2019, 11295 : 361 - 373
  • [36] Stereoscopic image quality assessment by deep convolutional neural network
    Fang, Yuming
    Yan, Jiebin
    Liu, Xuelin
    Wang, Jiheng
    JOURNAL OF VISUAL COMMUNICATION AND IMAGE REPRESENTATION, 2019, 58 : 400 - 406
  • [37] Blind Image Quality Assessment Via Convolutional Neural Network
    Wu, Meiyin
    Chen, Li
    PROCEEDINGS OF 2016 9TH INTERNATIONAL SYMPOSIUM ON COMPUTATIONAL INTELLIGENCE AND DESIGN (ISCID), VOL 1, 2016, : 221 - 224
  • [38] DISTORTION RECOGNITION FOR IMAGE QUALITY ASSESSMENT WITH CONVOLUTIONAL NEURAL NETWORK
    Wang, Hanli
    Zuo, Lingxuan
    Fu, Jie
    2016 IEEE INTERNATIONAL CONFERENCE ON MULTIMEDIA & EXPO (ICME), 2016,
  • [39] Color Image Quality Assessment with Multi Deep Convolutional Networks
    Yuan Yuan
    Zeng Guoqiang
    Chen Zhenwei
    Gao Yudong
    2019 IEEE 4TH INTERNATIONAL CONFERENCE ON SIGNAL AND IMAGE PROCESSING (ICSIP 2019), 2019, : 934 - 941
  • [40] AUTOMATED QUALITY ASSESSMENT OF APPLES USING CONVOLUTIONAL NEURAL NETWORKS
    Iosif, Adrian
    Maican, Edmond
    Biris, Sorin
    Popa, Lucretia
    INMATEH-AGRICULTURAL ENGINEERING, 2023, 71 (03): : 483 - 498