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PODNet: Pooled Outputs Distillation for Small-Tasks Incremental Learning

2020-04-28ECCV 2020Code Available1· sign in to hype

Arthur Douillard, Matthieu Cord, Charles Ollion, Thomas Robert, Eduardo Valle

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Abstract

Lifelong learning has attracted much attention, but existing works still struggle to fight catastrophic forgetting and accumulate knowledge over long stretches of incremental learning. In this work, we propose PODNet, a model inspired by representation learning. By carefully balancing the compromise between remembering the old classes and learning new ones, PODNet fights catastrophic forgetting, even over very long runs of small incremental tasks --a setting so far unexplored by current works. PODNet innovates on existing art with an efficient spatial-based distillation-loss applied throughout the model and a representation comprising multiple proxy vectors for each class. We validate those innovations thoroughly, comparing PODNet with three state-of-the-art models on three datasets: CIFAR100, ImageNet100, and ImageNet1000. Our results showcase a significant advantage of PODNet over existing art, with accuracy gains of 12.10, 6.51, and 2.85 percentage points, respectively. Code is available at https://github.com/arthurdouillard/incremental_learning.pytorch

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
CIFAR-100 - 50 classes + 10 steps of 5 classesPODNet (CNN)Average Incremental Accuracy63.19Unverified
CIFAR-100 - 50 classes + 25 steps of 2 classesPODNetAverage Incremental Accuracy60.72Unverified
CIFAR-100 - 50 classes + 50 steps of 1 classPODNetAverage Incremental Accuracy57.98Unverified
CIFAR-100 - 50 classes + 5 steps of 10 classesPODNet (CNN)Average Incremental Accuracy64.83Unverified
CIFAR-100-B0(5steps of 20 classes)PODNetAverage Incremental Accuracy66.7Unverified
ImageNet-100 - 50 classes + 10 steps of 5 classesPODNetAverage Incremental Accuracy73.14Unverified
ImageNet-100 - 50 classes + 25 steps of 2 classesPODNetAverage Incremental Accuracy67.28Unverified
ImageNet-100 - 50 classes + 50 steps of 1 classPODNetAverage Incremental Accuracy62.08Unverified
ImageNet-100 - 50 classes + 5 steps of 10 classesPODNetAverage Incremental Accuracy75.82Unverified
ImageNet - 500 classes + 10 steps of 50 classesPODNetAverage Incremental Accuracy64.13Unverified
ImageNet - 500 classes + 5 steps of 100 classesPODNetAverage Incremental Accuracy66.95Unverified

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