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Scale-aware Automatic Augmentation for Object Detection

Yukang Chen, Yanwei Li, Tao Kong, Lu Qi, Ruihang Chu, Lei Li, Jiaya Jia

202146 citationsDOI

Abstract

We propose Scale-aware AutoAug to learn data augmentation policies for object detection. We define a new scaleaware search space, where both image- and box-level augmentations are designed for maintaining scale invariance. Upon this search space, we propose a new search metric, termed Pareto Scale Balance, to facilitate search with high efficiency. In experiments, Scale-aware AutoAug yields significant and consistent improvement on various object detectors (e.g., RetinaNet, Faster R-CNN, Mask R-CNN, and FCOS), even compared with strong multi-scale training baselines. Our searched augmentation policies are transferable to other datasets and box-level tasks beyond object detection (e.g., instance segmentation and keypoint estimation) to improve performance. The search cost is much less than previous automated augmentation approaches for object detection. It is notable that our searched policies have meaningful patterns, which intuitively provide valuable insight for human data augmentation design. Code and models are available at https://github.com/Jia-ResearchLab/SA-AutoAug.

Topics & Concepts

Computer scienceObject detectionMetric (unit)Object (grammar)Scale (ratio)Artificial intelligenceCode (set theory)SegmentationPareto principleComputer visionMachine learningData miningPattern recognition (psychology)Set (abstract data type)Programming languageOperations managementPhysicsQuantum mechanicsEconomicsAdvanced Neural Network ApplicationsVideo Surveillance and Tracking MethodsAdvanced Image and Video Retrieval Techniques