SoCodeCNN: Program Source Code for Visual CNN Classification Using Computer Vision Methodology | IEEE Journals & Magazine | IEEE Xplore
IEEE Xplore has reached the limit on seats for your organization so has automatically paused access. You can continue to browse and search. Please try again shortly or contact us if you have any questions.

SoCodeCNN: Program Source Code for Visual CNN Classification Using Computer Vision Methodology


Converting program source code to visual images using SoCodeCNN approach to be utilized for program classification and power management on mobile MPSoC platform.

Abstract:

Automated feature extraction from program source-code such that proper computing resources could be allocated to the program is very difficult given the current state of ...Show More

Abstract:

Automated feature extraction from program source-code such that proper computing resources could be allocated to the program is very difficult given the current state of technology. Therefore, conventional methods call for skilled human intervention in order to achieve the task of feature extraction from programs. This research is the first to propose a novel human-inspired approach to automatically convert program source-codes to visual images. The images could be then utilized for automated classification by visual convolutional neural network (CNN) based algorithm. Experimental results show high prediction accuracy in classifying the types of program in a completely automated manner using this approach.
Converting program source code to visual images using SoCodeCNN approach to be utilized for program classification and power management on mobile MPSoC platform.
Published in: IEEE Access ( Volume: 7)
Page(s): 157158 - 157172
Date of Publication: 24 October 2019
Electronic ISSN: 2169-3536

Funding Agency:


References

References is not available for this document.