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Knowledge Distillation for Low-Power Object Detection: A Simple Technique and Its Extensions for Training Compact Models Using Unlabeled Data

Amin Banitalebi-Dehkordi

202112 citationsDOI

Abstract

The existing solutions for object detection distillation rely on the availability of both a teacher model and ground-truth labels. We propose a new perspective to relax this constraint. In our framework, a student is first trained with pseudo labels generated by the teacher, and then fine-tuned using labeled data, if any available. Extensive experiments demonstrate improvements over existing object detection distillation algorithms. In addition, decoupling the teacher and ground-truth distillation in this framework provides interesting properties such as: 1) using unlabeled data to further improve the student’s performance, 2) combining multiple teacher models of different architectures, even with different object categories, and 3) reducing the need for labeled data (with only 20% of COCO labels, this method achieves the same performance as the model trained on the entire set of labels). Furthermore, a by-product of this approach is the potential usage for domain adaptation. We verify these properties through extensive experiments.

Topics & Concepts

DistillationComputer scienceSimple (philosophy)Artificial intelligenceObject (grammar)Training setTraining (meteorology)Machine learningObject detectionPower (physics)Pattern recognition (psychology)ChromatographyChemistryQuantum mechanicsEpistemologyMeteorologyPhysicsPhilosophyAdvanced Neural Network ApplicationsMachine Learning and Data ClassificationDomain Adaptation and Few-Shot Learning
Knowledge Distillation for Low-Power Object Detection: A Simple Technique and Its Extensions for Training Compact Models Using Unlabeled Data | Litcius