ResNet-based correlation models excel in age recognition algorithms, but specific age recognition research is pure energy jeans currently limited and often plagued by substantial errors.We introduce an enhanced portrait age recognition algorithm based on ResNet, using CORAL (consistent rank logits) rank consistent ordered regression instead of traditional classification to predict precise ages.We further improve this approach by incorporating DCN (deformable convolution), resulting in the DCN-R model.DCN dynamically adjusts convolution kernels for diverse faces, improving accuracy and robustness.We tested DCN-R34 and DCN-R50 against the SOTA model, achieving better results with the same complexity.
This reduces the computational jomeed furniture load while maintaining or enhancing performance.