The invention provides a super-resolution
reconstruction method for a real-time video session service, and relates to the technical field of
digital image processing. According to the invention, the method comprises the steps: redesigning each super-resolution module, enabling a
feature extraction module to adopt coarse-to-fine
feature extraction and adopt a residual idea to accelerate the
feature extraction speed, introducing deformable
convolution into the video super-resolution
reconstruction method, and through the idea of a
recurrent neural network, dynamically optimizing a
frame difference learning module to obtain an
optimal alignment parameter; employing the optimal parameter for guiding deformable
convolution to carry out alignment operation; designing a
feature fusion network for enhancing correlation to carry out
feature fusion of adjacent frames, and finally designing a reconstruction module by adopting an information
distillation thought, designing an up-sampling reconstruction module, extracting more edge and texture features by using an information
distillation block, and adding the extracted edge and texture features with an up-sampled
reference frame to generate a final high-resolution video frame. The method is high in reconstruction speed and good in reconstruction quality.