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Security and Privacy in Communication Networks. 11th International Conference, SecureComm 2015, Dallas, TX, USA, October 26-29, 2015, Revised Selected Papers

Research Article

Image Spam Classification Using Neural Network

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  • @INPROCEEDINGS{10.1007/978-3-319-28865-9_41,
        author={Mozammel Chowdhury and Junbin Gao and Morshed Chowdhury},
        title={Image Spam Classification Using Neural Network},
        proceedings={Security and Privacy in Communication Networks. 11th International Conference, SecureComm 2015, Dallas, TX, USA, October 26-29, 2015, Revised Selected Papers},
        proceedings_a={SECURECOMM},
        year={2016},
        month={2},
        keywords={Image spam Spam filtering Machine learning BPNN},
        doi={10.1007/978-3-319-28865-9_41}
    }
    
  • Mozammel Chowdhury
    Junbin Gao
    Morshed Chowdhury
    Year: 2016
    Image Spam Classification Using Neural Network
    SECURECOMM
    Springer
    DOI: 10.1007/978-3-319-28865-9_41
Mozammel Chowdhury1,*, Junbin Gao1,*, Morshed Chowdhury2,*
  • 1: Charles Sturt University
  • 2: Deakin University
*Contact email: mochowdhury@csu.edu.au, jbgao@csu.edu.au, muc@deakin.edu.au

Abstract

Spam, an unsolicited or unwanted email, has traditionally been and continues to be one of the most challenging problems for cyber security. Image-based spam or image spam is a recent trick developed by the spammers which embeds malicious image with the text message in a binary format. Spammers use image based spamming with the intention of escaping the text based spam filters. On the way to detect image spam, several techniques have been developed. However, these techniques are vulnerable to most recent image spam and exhibit lack of competence. With a view to diminish the limitations of the existing solutions, this paper proposes a robust and efficient approach for image spam detection using machine learning algorithm. Our proposed system analyzes the file features together with the visual features of the embedded image. These features are used to train a classifier based on back propagation neural networks to detect the email as spam or legitimate one. Experimental evaluation demonstrates the effectiveness of the proposed system comparable to the existing models for image spam classification.

Keywords
Image spam Spam filtering Machine learning BPNN
Published
2016-02-09
Appears in
SpringerLink
http://dx.doi.org/10.1007/978-3-319-28865-9_41
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