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3 months ago

Increasingly Packing Multiple Facial-Informatics Modules in A Unified Deep-Learning Model via Lifelong Learning

{Chu-Song Chen Yi-Ming Chan Chein-Hung Chen Jia-Hong Lee Timmy S. T. Wan Steven C. Y. Hung}

Abstract

Simultaneously running multiple modules is a key requirement for a smart multimedia system for facial applications including face recognition, facial expression understanding, and gender identification. To effectively integrate them, a continual learning approach to learn new tasks without forgetting is introduced. Unlike previous methods growing monotonically in size, our approach maintains the compactness in continual learning. The proposed packing-and-expanding method is effective and easy to implement, which can iteratively shrink and enlarge the model to integrate new functions. Our integrated multitask model can achieve similar accuracy with only 39.9% of the original size.

Benchmarks

BenchmarkMethodologyMetrics
age-and-gender-classification-on-adiencePAENet (single crop, tensorflow)
Accuracy (5-fold): 89.08
age-and-gender-classification-on-adience-agePAENet (single crop, tensorflow)
Accuracy (5-fold): 57.3
continual-learning-on-cifar100-20-tasksPAENet
Average Accuracy: 77.1
facial-expression-recognition-on-affectnetPAENet
Accuracy (7 emotion): 65.29
gender-prediction-on-fotw-genderPAENet
Accuracy (%): 92.93

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Increasingly Packing Multiple Facial-Informatics Modules in A Unified Deep-Learning Model via Lifelong Learning | Papers | HyperAI