A Malicious Code Detection Method Based on FF-MICNN in the Internet of Things

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Abstract

It is critical to detect malicious code for the security of the Internet of Things (IoT). Therefore, this work proposes a malicious code detection algorithm based on the novel feature fusion–malware image convolutional neural network (FF-MICNN). This method combines a feature fusion algorithm with deep learning. First, the malicious code is transformed into grayscale image features by image technology, after which the opcode sequence features of the malicious code are extracted by the n-gram technique, and the global and local features are fused by feature fusion technology. The fused features are input into FF-MICNN for training, and an appropriate classifier is selected for detection. The results of experiments show that the proposed algorithm exhibits improvements in its detection speed, the comprehensiveness of features, and accuracy as compared with other algorithms. The accuracy rate of the proposed algorithm is also 0.2% better than that of a detection algorithm based on a single feature.

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Zhang, W., Feng, Y., Han, G., Zhu, H., & Tan, X. (2022). A Malicious Code Detection Method Based on FF-MICNN in the Internet of Things. Sensors, 22(22). https://doi.org/10.3390/s22228739

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