Continual Learning of Object Instances

04/22/2020
by   Kishan Parshotam, et al.
0

We propose continual instance learning - a method that applies the concept of continual learning to the task of distinguishing instances of the same object category. We specifically focus on the car object, and incrementally learn to distinguish car instances from each other with metric learning. We begin our paper by evaluating current techniques. Establishing that catastrophic forgetting is evident in existing methods, we then propose two remedies. Firstly, we regularise metric learning via Normalised Cross-Entropy. Secondly, we augment existing models with synthetic data transfer. Our extensive experiments on three large-scale datasets, using two different architectures for five different continual learning methods, reveal that Normalised cross-entropy and synthetic transfer leads to less forgetting in existing techniques.

READ FULL TEXT
research
05/10/2021

Elastic Weight Consolidation (EWC): Nuts and Bolts

In this report, we present a theoretical support of the continual learni...
research
07/09/2020

Graph-Based Continual Learning

Despite significant advances, continual learning models still suffer fro...
research
05/23/2019

Prototype Reminding for Continual Learning

Continual learning is a critical ability of continually acquiring and tr...
research
11/26/2020

Better Knowledge Retention through Metric Learning

In continual learning, new categories may be introduced over time, and a...
research
12/13/2022

3rd Continual Learning Workshop Challenge on Egocentric Category and Instance Level Object Understanding

Continual Learning, also known as Lifelong or Incremental Learning, has ...
research
09/23/2020

Streaming Graph Neural Networks via Continual Learning

Graph neural networks (GNNs) have achieved strong performance in various...
research
11/22/2019

Instance Cross Entropy for Deep Metric Learning

Loss functions play a crucial role in deep metric learning thus a variet...

Please sign up or login with your details

Forgot password? Click here to reset