1. Tamper video detection and localization using an adaptive segmentation and deep network technique.
- Author
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Raveendra, Malle and Nagireddy, K.
- Subjects
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DEEP learning , *FORGERY , *ARTIFICIAL neural networks , *DISCRETE cosine transforms , *GABOR transforms - Abstract
In this work we have explored the hybrid deep learning architecture for recognizing the tampering from the videos. This hybrid architecture explores the features from the authentic videos to categorize the tampered portions from the forged videos. Initially, the process begins by compressing the input video using the Discrete cosine transform (DCT) based double compression approach. Then, the filtering process is carried out to improve the quality of compressed frame using the bilateral filtering. Then, the modified segmentation approach is applied to segment the frames into different regions. The features from these segmented portions are extracted and fed into hybrid DNN-AGSO (deep neural network- Adaptivf RELATED WORKSe Galactic Swarm Optimization) using Gabor wavelet transform (GWT) technique. Three different datasets are used to evaluate the overall performance they are, VTD, MFC-18, and VIRAT by MATLAB platform. The recognition rate achieved by VTD, MFC-18, and VIRAT datasets are 96%, 95.2%, and 93.47% respectively. [ABSTRACT FROM AUTHOR]
- Published
- 2022
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