TY - GEN
T1 - Research on HDR image fusion algorithm based on Laplace pyramid weight transform with extreme low-light CMOS
AU - Guan, Wen
AU - Li, Li
AU - Jin, Weiqi
AU - Qiu, Su
AU - Zou, Yan
N1 - Publisher Copyright:
© Copyright 2015 SPIE.
PY - 2015
Y1 - 2015
N2 - Extreme-Low-Light CMOS has been widely applied in the field of night-vision as a new type of solid image sensor. But if the illumination in the scene has drastic changes or the illumination is too strong, Extreme-Low-Light CMOS can't both clearly present the high-light scene and low-light region. According to the partial saturation problem in the field of night-vision, a HDR image fusion algorithm based on the Laplace Pyramid was researched. The overall gray value and the contrast of the low light image is very low. We choose the fusion strategy based on regional average gradient for the top layer of the long exposure image and short exposure image, which has rich brightness and textural features. The remained layers which represent the edge feature information of the target are based on the fusion strategy based on regional energy. In the process of source image reconstruction with Laplacian pyramid image, we compare the fusion results with four kinds of basal images. The algorithm is tested using Matlab and compared with the different fusion strategies. We use information entropy, average gradient and standard deviation these three objective evaluation parameters for the further analysis of the fusion result. Different low illumination environment experiments show that the algorithm in this paper can rapidly get wide dynamic range while keeping high entropy. Through the verification of this algorithm features, there is a further application prospect of the optimized algorithm. Keywords: high dynamic range imaging, image fusion, multi-exposure image, weight coefficient, information fusion, Laplacian pyramid transform.
AB - Extreme-Low-Light CMOS has been widely applied in the field of night-vision as a new type of solid image sensor. But if the illumination in the scene has drastic changes or the illumination is too strong, Extreme-Low-Light CMOS can't both clearly present the high-light scene and low-light region. According to the partial saturation problem in the field of night-vision, a HDR image fusion algorithm based on the Laplace Pyramid was researched. The overall gray value and the contrast of the low light image is very low. We choose the fusion strategy based on regional average gradient for the top layer of the long exposure image and short exposure image, which has rich brightness and textural features. The remained layers which represent the edge feature information of the target are based on the fusion strategy based on regional energy. In the process of source image reconstruction with Laplacian pyramid image, we compare the fusion results with four kinds of basal images. The algorithm is tested using Matlab and compared with the different fusion strategies. We use information entropy, average gradient and standard deviation these three objective evaluation parameters for the further analysis of the fusion result. Different low illumination environment experiments show that the algorithm in this paper can rapidly get wide dynamic range while keeping high entropy. Through the verification of this algorithm features, there is a further application prospect of the optimized algorithm. Keywords: high dynamic range imaging, image fusion, multi-exposure image, weight coefficient, information fusion, Laplacian pyramid transform.
KW - High dynamic range imaging
KW - Laplacian pyramid transform
KW - image fusion
KW - information fusion
KW - multi-exposure image
KW - weight coefficient
UR - http://www.scopus.com/inward/record.url?scp=84963543250&partnerID=8YFLogxK
U2 - 10.1117/12.2199818
DO - 10.1117/12.2199818
M3 - Conference contribution
AN - SCOPUS:84963543250
T3 - Proceedings of SPIE - The International Society for Optical Engineering
BT - AOPC 2015
A2 - Yang, Weiping
A2 - Shen, Chunhua
A2 - Liu, Honghai
PB - SPIE
T2 - Applied Optics and Photonics, China: Image Processing and Analysis, AOPC 2015
Y2 - 5 May 2015 through 7 May 2015
ER -