Publication | Open Access
Jointly Optimize Data Augmentation and Network Training: Adversarial Data Augmentation in Human Pose Estimation
42
Citations
28
References
2018
Year
Artificial IntelligenceConvolutional Neural NetworkEngineeringMachine LearningHuman Pose EstimationHuman AugmentationAdversarial Data AugmentationNetwork TrainingData ScienceRandom Data AugmentationAdversarial Machine LearningAugmentation NetworkRobot LearningData AugmentationMachine VisionOptimize Data AugmentationComputer ScienceHuman Image SynthesisDeep LearningComputer VisionGenerative Adversarial Network
Random data augmentation is a critical technique to avoid overfitting in training deep neural network models. However, data augmentation and network training are usually treated as two isolated processes, limiting the effectiveness of network training. Why not jointly optimize the two? We propose adversarial data augmentation to address this limitation. The main idea is to design an augmentation network (generator) that competes against a target network (discriminator) by generating `hard' augmentation operations online. The augmentation network explores the weaknesses of the target network, while the latter learns from `hard' augmentations to achieve better performance. We also design a reward/penalty strategy for effective joint training. We demonstrate our approach on the problem of human pose estimation and carry out a comprehensive experimental analysis, showing that our method can significantly improve state-of-the-art models without additional data efforts.
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