Department of Electrical and Electronics Engineering2024-11-092020978-1-7281-7206-42165-0608N/Ahttps://hdl.handle.net/20.500.14288/9946This paper provides new results over our previous work presented in ICIP 2019 on the performance of learned frame prediction architectures and associated training methods. More specifically, we show that using an end-to-end residual connection in the fully convolutional neural network (FCNN) provides improved performance. in order to provide comparative results, we trained a residual FCNN, A convolutional RNN (CRNN), and a convolutional long-short term memory (CLSTM) network for next frame prediction using the mean square loss. We performed both stateless and stateful training for recurrent networks. Experimental results show that the residual FCNN architecture performs the best in terms of peak signal to noise ratio (PSNR) at the expense of higher training and test (inference) computational complexity. the CRNN can be stably and efficiently trained using the stateful truncated backpropagation through time procedure, and requires an order of magnitude less inference runtime to achieve an acceptable performance in near real-time.Civil engineeringElectrical electronics engineeringTelecommunicationVideo frame prediction via deep learningConference proceeding653136100021N/A9672