Litcius/Paper detail

Incremental Object Detection via Meta-Learning

K J Joseph, Jathushan Rajasegaran, Salman Khan, Fahad Shahbaz Khan, Vineeth N Balasubramanian

2021Research Archive of Indian Institute of Technology Hyderabad (Indian Institute of Technology Hyderabad)83 citations

Abstract

In a real-world setting, object instances from new classes can be continuously encountered by object detectors. When existing object detectors are applied to such scenarios, their performance on old classes deteriorates significantly. A few efforts have been reported to address this limitation, all of which apply variants of knowledge distillation to avoid catastrophic forgetting. We note that although distillation helps to retain previous learning, it obstructs fast adaptability to new tasks, which is a critical requirement for incremental learning. In this pursuit, we propose a meta-learning approach that learns to reshape model gradients, such that information across incremental tasks is optimally shared. This ensures a seamless information transfer via a meta-learned gradient preconditioning that minimizes forgetting and maximizes knowledge transfer. In comparison to existing meta-learning methods, our approach is task-agnostic, allows incremental addition of new-classes and scales to high-capacity models for object detection. We evaluate our approach on a variety of incremental learning settings defined on PASCAL-VOC and MS COCO datasets, where our approach performs favourably well against state-of-the-art methods. IEEE

Topics & Concepts

Computer sciencePascal (unit)ForgettingArtificial intelligenceMachine learningTransfer of learningObject detectionIncremental learningObject (grammar)Learning objectMeta learning (computer science)Task (project management)Pattern recognition (psychology)Programming languageLinguisticsPhilosophyManagementEconomicsDomain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsMultimodal Machine Learning Applications
Incremental Object Detection via Meta-Learning | Litcius