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The GIST and RIST of Iterative Self-Training for Semi-Supervised Segmentation

Eu Wern Teh, Terrance DeVries, Brendan Duke, Ruowei Jiang, Parham Aarabi, Graham W. Taylor

202213 citationsDOI

Abstract

We consider the task of semi-supervised semantic segmentation, where we aim to produce pixel-wise semantic object masks given only a small number of human-labeled training examples. We focus on iterative self-training methods in which we explore the behavior of self-training over multiple refinement stages. We show that iterative self-training leads to performance degradation if done naïvely with a fixed ratio of human-labeled to pseudo-labeled training examples. We propose Greedy Iterative Self-Training (GIST) and Random Iterative Self-Training (RIST) strategies that alternate between training on either human-labeled data or pseudo-labeled data at each refinement stage, resulting in a performance boost rather than degradation. We further show that GIST and RIST can be combined with existing semi-supervised learning methods to boost performance.

Topics & Concepts

Computer scienceSegmentationIterative methodArtificial intelligenceTask (project management)Object (grammar)Training (meteorology)Focus (optics)GiSTPixelTraining setImage segmentationPattern recognition (psychology)Machine learningComputer visionAlgorithmMeteorologyStromal cellManagementOpticsEconomicsPathologyPhysicsMedicineDomain Adaptation and Few-Shot LearningAdvanced Neural Network ApplicationsMultimodal Machine Learning Applications
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