Image fusion is the process of registering two different images of same scene to combine the individual image quality details to single image. This work is going to reduce the complexities while implementing image fusion by applying the Deep Neural Network (DNN) to analyse the input images to get the resultant output image. At first, the DNN checks whether the input images are in same size by checking the dimensions of the input images. Then, the DNN checks the resolution of the input images and it resize the low resolution image corresponds to the high resolution image for better image quality output, if the input images are in different sizes. Then it performs image rectification using the left side and right side images. After rectification, the DNN executes the image registration by matching the coordinates of the input images. Finally, the image fusion is performed with the input images and the resultant image is enhanced to improve the quality of an image and it can be evaluated by Mean Square Error (MSE), Peak Signal to Noise Ratio (PSNR), Correlation Coefficient (CC), Maximum Squared Error (MAXERR), Structured Similarity Index Measurement (SSIM) and Ratio of Squared Norms (L2RAT).
CITATION STYLE
Aswin Kumer, S. V., & Srivatsa, S. K. (2019). An implementation of futuristic deep learning neural network in satellite images for hybrid image fusion. International Journal of Recent Technology and Engineering, 8(1), 484–487.
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