Jia-Hong Lee, Yi-Ming Chan, Ting-Yen Chen, Chu-Song Chen
Automatic age and gender classification based on unconstrained images has become essential techniques on mobile devices. With limited computing power, how to develop a robust system becomes a challenging task. In this paper, we present an efficient convolutional neural network (CNN) called lightweight multi-task CNN for simultaneous age and gender classification. Lightweight multi-task CNN uses depthwise separable convolution to reduce the model size and save the inference time. On the public challenging Adience dataset, the accuracy of age and gender classification is better than baseline multi-task CNN methods.
| Task | Dataset | Metric | Value | Model |
|---|---|---|---|---|
| Facial Recognition and Modelling | Adience Gender | Accuracy (5-fold) | 85.16 | LMTCNN-2-1 (single crop, tensorflow) |
| Facial Recognition and Modelling | Adience Age | Accuracy (5-fold) | 44.26 | LMTCNN-2-1 (single crop, tensorflow) |
| Face Reconstruction | Adience Gender | Accuracy (5-fold) | 85.16 | LMTCNN-2-1 (single crop, tensorflow) |
| Face Reconstruction | Adience Age | Accuracy (5-fold) | 44.26 | LMTCNN-2-1 (single crop, tensorflow) |
| 3D | Adience Gender | Accuracy (5-fold) | 85.16 | LMTCNN-2-1 (single crop, tensorflow) |
| 3D | Adience Age | Accuracy (5-fold) | 44.26 | LMTCNN-2-1 (single crop, tensorflow) |
| 3D Face Modelling | Adience Gender | Accuracy (5-fold) | 85.16 | LMTCNN-2-1 (single crop, tensorflow) |
| 3D Face Modelling | Adience Age | Accuracy (5-fold) | 44.26 | LMTCNN-2-1 (single crop, tensorflow) |
| 3D Face Reconstruction | Adience Gender | Accuracy (5-fold) | 85.16 | LMTCNN-2-1 (single crop, tensorflow) |
| 3D Face Reconstruction | Adience Age | Accuracy (5-fold) | 44.26 | LMTCNN-2-1 (single crop, tensorflow) |
| Age And Gender Classification | Adience Gender | Accuracy (5-fold) | 85.16 | LMTCNN-2-1 (single crop, tensorflow) |
| Age And Gender Classification | Adience Age | Accuracy (5-fold) | 44.26 | LMTCNN-2-1 (single crop, tensorflow) |