Nature Inspired Algorithm for Pixel Location Optimization in Video Steganography Using Deep RNN
322
193
Abstract
The steganography is applied on text, image, video, and audio files. The steganography is useful for safe and secure data transmission. Video steganography is used to preserve confidential information of security applications. To improve security of the message, pixels locations are optimized using nature inspired algorithm. As conventional algorithms have a low convergence rate a new algorithm is proposed. A New algorithm is developed by combining two model algorithms namely, Water wave optimization (WWO) and Earth worm optimization (EWO) and is renamed as proposed Water-Earth Worm Optimization (WEWO) algorithm. The frames are preprocessed and extracted using Discrete Cosine transform (DCT) and Structured Similarity index (SSIM), respectively, as regular processing. For pixel prediction, the fitness function is obtained from neighborhood entropies in proposed algorithm. In this method, secret message is embedded with two level decomposition of Wavelet Transform (WT). In the proposed work is tested with ‘CAVIAR’ dataset. The Proposed WEWO-Deep RNN algorithm performance is tested with modular noises such as, pepper, salt and pepper noises. The proposed method gives enhanced performance, which is seen with the parameters, Peak Signal to Noise Ratio (PSNR), Mean Square Error (MSE), and Correlation Coefficient (CC) which defines image quality indices.
Keywords
Video steganography, Discrete cosine transform, Deep recurrent neural network, Wavelet transform
Full Text:
PDFReferences
Salunkhe, S. & Bhosale, S. (2021). Nature Inspired Algorithm for Pixel Location Optimization in Video Steganography Using Deep RNN. International Journal on Engineering, Science and Technology (IJonEST), 3(2), 146-154.
DOI: https://doi.org/10.46328/ijonest.67
Refbacks
- There are currently no refbacks.
Copyright (c) 2021 International Journal on Engineering, Science and Technology
Abstracting/Indexing
International Journal on Engineering, Science and Technology (IJonEST)-ISSN: 2642-4088
This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.