TY - JOUR
T1 - Detecting Frame Deletion in Videos Using Supervised and Unsupervised Learning with Convolutional Neural Networks
AU - Ceron, Jorge
AU - Tinipuclla, Cristian
AU - Shiguihara, Pedro
N1 - Publisher Copyright:
© 2003-2012 IEEE.
PY - 2025
Y1 - 2025
N2 - In recent years, videos have been susceptible not only to any edition but also to a variety of forgeries. One of the most popular video forgeries is frame deletion, in which a group of frames is removed to hide specific actions from the human eye. When frame deletion occurs, videos selected as evidence lose their evidentiary value. This highlights the necessity of automation, especially for analyzing large volumes of videos. Thus, we measure the performance of two deep learning approaches for frame deletion detection. Both of them use Convolutional Neural Networks (CNN): The first one, a supervised 3DCNN model and, the second one, is an unsupervised model compound of VGG-16 and Resnet-50. We evaluated them using 10-fold cross-validation in the following datasets: UCF-101, VIFFD and DTD (Driving Test Dataset), which is our contribution to the data community. To the best of our knowledge, no comparison of both approaches using 10-fold cross-validation has been found in the literature before. Afterward, we analyze the results and make recommendations for future work in this area.
AB - In recent years, videos have been susceptible not only to any edition but also to a variety of forgeries. One of the most popular video forgeries is frame deletion, in which a group of frames is removed to hide specific actions from the human eye. When frame deletion occurs, videos selected as evidence lose their evidentiary value. This highlights the necessity of automation, especially for analyzing large volumes of videos. Thus, we measure the performance of two deep learning approaches for frame deletion detection. Both of them use Convolutional Neural Networks (CNN): The first one, a supervised 3DCNN model and, the second one, is an unsupervised model compound of VGG-16 and Resnet-50. We evaluated them using 10-fold cross-validation in the following datasets: UCF-101, VIFFD and DTD (Driving Test Dataset), which is our contribution to the data community. To the best of our knowledge, no comparison of both approaches using 10-fold cross-validation has been found in the literature before. Afterward, we analyze the results and make recommendations for future work in this area.
KW - CNN
KW - deep learning
KW - frame deletion detection
KW - temporal forgery
KW - video forgery detection
UR - https://www.scopus.com/pages/publications/105015462152
U2 - 10.1109/TLA.2025.11150631
DO - 10.1109/TLA.2025.11150631
M3 - Artículo
AN - SCOPUS:105015462152
SN - 1548-0992
VL - 23
SP - 838
EP - 847
JO - IEEE Latin America Transactions
JF - IEEE Latin America Transactions
IS - 10
ER -