Laser & Optoelectronics Progress, Volume. 56, Issue 11, 111003(2019)

Quality Assessment Without Reference Images Based on Convolution Neural Network and Deep Forest

Yindong Chen1, Chaofeng Li2, and Qingbing Sang1、*
Author Affiliations
  • 1 School of Internet of Things Engineering, Jiangnan University, Wuxi, Jiangsu 214122, China
  • 2 Institute of Logistics Science & Engineering, Shanghai Maritime University, Shanghai 200135, China;
  • show less

    This paper proposes a new quality assessment method without reference images based on the convolutional neural network (CNN) and deep regression forest. First, this method performs a local contrast normalization on the original images. Second, it subsequently uses CNN to extract the discriminant features of the image quality. Finally, it utilizes the deep regression forest to predict the image quality. The method does not require any manual features, which simplifies the process of image preprocessing. In addition, fewer convolution layers are beneficial to reduce the training time of the network. The application of deep strategy to integrate the regression forests improves the prediction accuracy of a single forest. On the LIVE and TID2008 databases, the experimental results show that the proposed method can predict the image quality well and has a good generalization performance with high accuracy. The proposed method achieves a state-of-the-art performance, especially in JPEG2000, Gaussian blur and white noise distortions.

    Tools

    Get Citation

    Copy Citation Text

    Yindong Chen, Chaofeng Li, Qingbing Sang. Quality Assessment Without Reference Images Based on Convolution Neural Network and Deep Forest[J]. Laser & Optoelectronics Progress, 2019, 56(11): 111003

    Download Citation

    EndNote(RIS)BibTexPlain Text
    Save article for my favorites
    Paper Information

    Category: Image Processing

    Received: Nov. 23, 2018

    Accepted: Dec. 25, 2018

    Published Online: Jun. 13, 2019

    The Author Email: Sang Qingbing (sangqb@163.com)

    DOI:10.3788/LOP56.111003

    Topics