Enhanced CNN Approaches for Multi-Image Embedding in Image Steganography


연구 분야: Strategies



학회: 2024 2nd International Conference on Information and Communication Technology (ICICT)


초록

We unveil a convolutional neural network (\text{CN N})-architectured steganographic model aimed at concealing multiple secret images in a single cover image, seeking to enhance payload capacity and minimize any encoding or decoding errors. We use a method that employs \text{CN N}{\mathrm{s}} for encoding and decoding, harnessing a multi-scale encoder and a key-based decryption approach for increased security. Steganography is accurately and successfully achieved at two and three image levels by the model. For the use of two-image steganography, an accuracy of 95.16% was achieved for the encoded cover image, and decoding accuracies of 97.16% and 97.28% for secret images 1 and 2, respectively. In the three-image steganography, the accuracy of the coded cover image stood at 93.84%, while the decoded secret images achieved accuracies of 96.39%, 94.82%, and 94.76%. We boosted security by employing cryptographic techniques such as AES and ChaCha20 and instituted key integration at the architectural level. Our findings show the competent encoding and decoding of a range of secret images with enhanced security and noteworthy precision.


Author Profile
Md. Irtiza Hossain

Department of Computer Science and Engineering Brac University Dhaka Bangladesh

Andorra
Author Profile
Samiul Kadir

Department of Computer Science and Engineering Brac University Dhaka Bangladesh

Andorra
Author Profile
Farhan Ishraq Fagun

Department of Computer Science and Engineering Brac University Dhaka Bangladesh

Andorra

📄 논문 정보

발행 연도 2024년
인용수 2
출판 국가 Andorra
사이트 IEEE
좋아요 수 0

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