Description
Transmission Of Encrypted Image Over Ofdm
Abstract:
Wireless communication refers to the transfer of data and information without using a wire, cable, or any electrical conductor. It is one of the most relevant technologies in mobile and computer communication today, primarily making use of radio waves. With the emergence of this technology, the security of the data transmitted became a pertinent issue. To prevent unauthorized access to valuable information, various security standards have been developed over the past few years. These improvements include methods such as encryption of data at the source and decryption at the destination, scrambling of data, precoding, etc. In this paper, dual-sided encryption and scrambling technique for an OFDM system is proposed. An XOR algorithm is employed for encryption and chaotic scrambling is used to fulfill scrambling needs. The method is employed for a channel that is characterized by AWGN. 16-QAM is utilized to modulate the encrypted data. The BER for various images is tabulated. Clipping used in the proposed method helps improve the PAPR of the given information. Transmission Of Encrypted Image Over Ofdm
Existing Method:
The FFT based MIMO-OFDM systems
Drawbacks:
Low Data Transmission Due To High Bit Loss Interference
Hard decision decoding systems
Proposed Modification:
DWT based MIMO OFDM with turbo decoding various modulation techniques BER analysis
4-QAM, 16QAM, 64 CAM
Fig: MIMO- OFDM with turbo coder
Fig: Turbo Encoder
Fig: Turbo Decoder
Advantages:
- Iterative soft decision-based decoding methodology
- The time Duration is less
- Retransmission of data over the network decreased
- Carrier recovery is high for other applications is high
Application:
- Dual scenario rate capacity networks
- City coverage area analysis on Improvement through WIFI connection.
- Medical application through Emergency Analysis on a mobile communication
Software Requirement:
- MATLAB 2014a or above versions
References:-
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[2] M. Valenti, Iterative channel estimation for turbo codes over fading channels, in IEEE Wireless Communications and Networking Conference, vol. 3, 23-28 September 2000, pp. 1019.1024.
[3] B.-L. Yeap, C. Wong, and L. Hanzo Reduced complexity in-phase/ quadrature-phase M-QAM turbo equalization using iterative channel estimation, IEEE Transactions on Wireless Communications, vol. 2, no. 1, pp. 2.10, 2003.
[4] S. Song, A. Singer, and K.-M. Sung, Turbo equalization with an unknown channel, in Proceedings of IEEE International Conference? on Acoustics, Speech, and Signal Processing, vol. 3, 2002.
[5] .., .Soft input channel estimation for turbo equalization, IEEE Transactions on Signal Processing, [see also IEEE Transactions on Acoustics, Speech and Signal Processing], vol. 52, pp. 2885.2894, 2004.
[6] R. Otnes and M. T?uchler, .Soft iterative channel estimation for turbo equalization: comparison of channel estimation algorithms, in The 8th International Conference on Communication Systems, vol. 1, 2002, pp. 72.76.
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