Contrastive View Design Strategies to Enhance Robustness to Domain Shifts in Downstream Object Detection

12/09/2022
by   Kyle Buettner, et al.
0

Contrastive learning has emerged as a competitive pretraining method for object detection. Despite this progress, there has been minimal investigation into the robustness of contrastively pretrained detectors when faced with domain shifts. To address this gap, we conduct an empirical study of contrastive learning and out-of-domain object detection, studying how contrastive view design affects robustness. In particular, we perform a case study of the detection-focused pretext task Instance Localization (InsLoc) and propose strategies to augment views and enhance robustness in appearance-shifted and context-shifted scenarios. Amongst these strategies, we propose changes to cropping such as altering the percentage used, adding IoU constraints, and integrating saliency based object priors. We also explore the addition of shortcut-reducing augmentations such as Poisson blending, texture flattening, and elastic deformation. We benchmark these strategies on abstract, weather, and context domain shifts and illustrate robust ways to combine them, in both pretraining on single-object and multi-object image datasets. Overall, our results and insights show how to ensure robustness through the choice of views in contrastive learning.

READ FULL TEXT

page 4

page 6

research
07/09/2022

A Study on Self-Supervised Object Detection Pretraining

In this work, we study different approaches to self-supervised pretraini...
research
03/17/2023

Enhancing the Role of Context in Region-Word Alignment for Object Detection

Vision-language pretraining to learn a fine-grained, region-word alignme...
research
12/10/2021

Tradeoffs Between Contrastive and Supervised Learning: An Empirical Study

Contrastive learning has made considerable progress in computer vision, ...
research
06/04/2021

Aligning Pretraining for Detection via Object-Level Contrastive Learning

Image-level contrastive representation learning has proven to be highly ...
research
01/13/2023

Learning Transformations To Reduce the Geometric Shift in Object Detection

The performance of modern object detectors drops when the test distribut...
research
12/06/2021

Seeing BDD100K in dark: Single-Stage Night-time Object Detection via Continual Fourier Contrastive Learning

Despite tremendous improvements in state-of-the-art object detectors, ad...
research
04/03/2022

RestoreX-AI: A Contrastive Approach towards Guiding Image Restoration via Explainable AI Systems

Modern applications such as self-driving cars and drones rely heavily up...

Please sign up or login with your details

Forgot password? Click here to reset