logo
banner

Journals & Publications

Publications Papers

Papers

Image Enhancement for Outdoor Long-Range Surveillance Using IQ-Learning Multiscale Retinex
Oct 30, 2017Author:
PrintText Size A A

Title: Image Enhancement for Outdoor Long-Range Surveillance Using IQ-Learning Multiscale Retinex

 Authors: Liu, HT; Lu, HQ; Zhang, Y

 Author Full Names: Liu, Haoting; Lu, Hanqing; Zhang, Yu

 Source: IET IMAGE PROCESSING, 11 (9):786-795; 10.1049/iet-ipr.2016.0972 SEP 2017

 Language: English

 Abstract: The visible light camera-based long-range surveillance always suffers from the complex atmosphere. When applying some traditional image enhancement methods, the computational effects behave limited because of their poor environment adaptability. To conquer that problem, a blind image quality (IQ) learning-based multiscale Retinex, i.e. the IQ-learning multiscale Retinex, is proposed. First, a series of typical degenerated images are collected. Second, several blind IQ evaluation metrics are computed for the dataset above. They are the image brightness degree, the image region contrast degree, the image edge blur degree, the image colour quality degree, and the image noise degree. Third, a wavelet transform multi-scale Retinex (WT_MSR) is used to carry out the basic image enhancement. A kind of optimal enhancement is implemented by the subjective evaluation and tuning of multiple optimal control parameters (MOCPs) of WT_MSR for these degenerated dataset. Fourth, the back propagation neural network (BPNN) is used to build a connection between the IQ metrics and the MOCPs. Finally, when a new image is captured, this system will compute its IQ metrics and estimate the MOCPs for the WT_MSR by BPNN; then a kind of optimal enhancement can be realised. Many outdoor applications have shown the effectiveness of proposed method.

 ISSN: 1751-9659

 eISSN: 1751-9667

 IDS Number: FG4AI

 Unique ID: WOS:000410158000014

*Click Here to View Full Record