Low-shot Visual Recognition by Shrinking and Hallucinating Features

06/09/2016
by   Bharath Hariharan, et al.
0

Low-shot visual learning---the ability to recognize novel object categories from very few examples---is a hallmark of human visual intelligence. Existing machine learning approaches fail to generalize in the same way. To make progress on this foundational problem, we present a low-shot learning benchmark on complex images that mimics challenges faced by recognition systems in the wild. We then propose a) representation regularization techniques, and b) techniques to hallucinate additional training examples for data-starved classes. Together, our methods improve the effectiveness of convolutional networks in low-shot learning, improving the one-shot accuracy on novel classes by 2.3x on the challenging ImageNet dataset.

READ FULL TEXT
research
01/16/2018

Low-Shot Learning from Imaginary Data

Humans can quickly learn new visual concepts, perhaps because they can e...
research
01/18/2021

Using Shape to Categorize: Low-Shot Learning with an Explicit Shape Bias

It is widely accepted that reasoning about object shape is important for...
research
07/09/2020

Generalized Many-Way Few-Shot Video Classification

Few-shot learning methods operate in low data regimes. The aim is to lea...
research
12/21/2018

Learning Compositional Representations for Few-Shot Recognition

One of the key limitations of modern deep learning based approaches lies...
research
05/11/2021

Few-Shot Learning by Integrating Spatial and Frequency Representation

Human beings can recognize new objects with only a few labeled examples,...
research
06/11/2021

What Can Knowledge Bring to Machine Learning? – A Survey of Low-shot Learning for Structured Data

Supervised machine learning has several drawbacks that make it difficult...
research
12/13/2019

Few-shot Learning with Contextual Cueing for Object Recognition in Complex Scenes

Few-shot Learning aims to recognize new concepts from a small number of ...

Please sign up or login with your details

Forgot password? Click here to reset