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CVPR20 CLVision Continual Learning Challenge 1'st Place Solution for team UT_LG

Zheda Mai(University of Toronto), Hyunwoo Kim(LG Sciencepark), Jihwan Jeong (University of Toronto), Scott Sanner (University of Toronto, Vector Institute)

Contact: [email protected]

Final Ranking: https://sites.google.com/view/clvision2020/challenge/challenge-winners

Paper: http://arxiv.org/abs/2007.05683

Introduction

Continual learning is a branch of deep learning that seeks to strike a balance between learning stability and plasticity. The CVPR 2020 CLVision Continual Learning for Computer Vision challenge is dedicated to evaluating and advancing the current state-of-the-art continual learning methods.

The challenge will be based on the CORe50 dataset and composed of three tracks:

  • New Instances (NI): In this setting 8 training batches of the same 50 classes are encountered over time. Each training batch is composed of different images collected in different environmental conditions.
  • Multi-Task New Classes (Multi-Task-NC)*: In this setting the 50 different classes are split into 9 different tasks: 10 classes in the first batch and 5 classes in the other 8. In this case the task label will be provided during training and test.
  • New Instances and Classes (NIC): this protocol is composed of 391 training batches containing 300 images of a single class. No task label will be provided and each batch may contain images of a class seen before as well as a completely new class.

Metrics

Each solution will be evaluated across a number of metrics:

  1. Final Accuracy on the Test Set: should be computed only at the end of the training.
  2. Average Accuracy Over Time on the Validation Set: should be computed at every batch/task.
  3. Total Training/Test time: total running time from start to end of the main function (in Minutes).
  4. RAM Usage: Total memory occupation of the process and its eventual sub-processes. Should be computed at every epoch (in MB).
  5. Disk Usage: Only of additional data produced during training (like replay patterns) and also pre-trained weights. Should be computed at every epoch (in MB).

Final aggregation metric (CL_score): weighted average of the 1-5 metrics (0.3, 0.1, 0.15, 0.125, 0.125 respectively

Approach

Our approach is based on Experience Replay, a memory-based continual learning method that has been proved effective in various continual learning problems. The details of the approach can be found in our paper.

Reproduce the Result

Data & Environment

Download the dataset and related utilities:

sh fetch_data_and_setup.sh

Setup the conda environment:

conda env create -f environment.yml
conda activate clvision-challenge

Reproduce the final results for all tracks

sh create_submission.sh

The parameters for the final submissions:

  • config/final/nc.yml
  • config/final/ni.yml
  • config/final/nic.yml

The detailed explanation of these parameters can be found in general_main.py

Acknowledgement

The starting code of this repository is from the official starting repository.