TY - EJOU AU - Xin, Weiqiang AU - Wang, Zheng AU - Chen, Xi AU - Tang, Yufeng AU - Li, Bing AU - Tian, Chunwei TI - 3D Enhanced Residual CNN for Video Super-Resolution Network T2 - Computers, Materials \& Continua PY - 2025 VL - 85 IS - 2 SN - 1546-2226 AB - Deep convolutional neural networks (CNNs) have demonstrated remarkable performance in video super-resolution (VSR). However, the ability of most existing methods to recover fine details in complex scenes is often hindered by the loss of shallow texture information during feature extraction. To address this limitation, we propose a 3D Convolutional Enhanced Residual Video Super-Resolution Network (3D-ERVSNet). This network employs a forward and backward bidirectional propagation module (FBBPM) that aligns features across frames using explicit optical flow through lightweight SPyNet. By incorporating an enhanced residual structure (ERS) with skip connections, shallow and deep features are effectively integrated, enhancing texture restoration capabilities. Furthermore, 3D convolution module (3DCM) is applied after the backward propagation module to implicitly capture spatio-temporal dependencies. The architecture synergizes these components where FBBPM extracts aligned features, ERS fuses hierarchical representations, and 3DCM refines temporal coherence. Finally, a deep feature aggregation module (DFAM) fuses the processed features, and a pixel-upsampling module (PUM) reconstructs the high-resolution (HR) video frames. Comprehensive evaluations on REDS, Vid4, UDM10, and Vim4 benchmarks demonstrate well performance including 30.95 dB PSNR/0.8822 SSIM on REDS and 32.78 dB/0.8987 on Vim4. 3D-ERVSNet achieves significant gains over baselines while maintaining high efficiency with only 6.3M parameters and 77 ms/frame runtime (i.e., 20× faster than RBPN). The network’s effectiveness stems from its task-specific asymmetric design that balances explicit alignment and implicit fusion. KW - Video super-resolution; 3D convolution; enhanced residual CNN; spatio-temporal feature extraction DO - 10.32604/cmc.2025.069784