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Domain Generalised Faster R-CNN

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conference contribution
posted on 2024-06-04, 09:19 authored by Karthik Seemakurthy, Charles FoxCharles Fox, Erchan Aptoula, Petra BosiljPetra Bosilj

Domain generalisation (i.e. out-of-distribution generalisation) is an open problem in machine learning, where the goal is to train a model via one or more source domains, that will generalise well to unknown target domains. While the topic is attracting increasing interest, it has not been studied in detail in the context of object detection. The established approaches all operate under the covariate shift assumption, where the conditional distributions are assumed to be approximately equal across source domains. This is the first paper to address domain generalisation in the context of object detection, with a rigorous mathematical analysis of domain shift, without the covariate shift assumption. We focus on improving the generalisation ability of object detection by proposing new regularisation terms to address the domain shift that arises due to both classification and bounding box regression. Also, we include an additional consistency regularisation term to align the local and global level predictions. The proposed approach is implemented as a Domain Generalised Faster R-CNN and evaluated using four object detection datasets which provide domain metadata (GWHD, Cityscapes, BDD100K, Sim10K) where it exhibits a consistent performance improvement over the baselines. All the codes for replicating the results in this paper can be found at https://github.com/karthikiitm87/domain-generalisation.git

History

School affiliated with

  • Lincoln Institute for Agri-Food Technology (Research Outputs)
  • College of Health and Science (Research Outputs)

Publication Title

Proceedings of The 37th AAAI conference on Artificial Intelligence

Publisher

Association for Advancement of Artificial Intelligence

Date Submitted

2023-05-22

Date Accepted

2022-11-19

Date of First Publication

2023-03-31

Date of Final Publication

2023-03-31

Event Name

The 37th AAAI conference on Artificial Intelligence

Event Dates

7th Feb 2023 to 14th Feb 2023

Open Access Status

  • Open Access

Date Document First Uploaded

2023-03-13

ePrints ID

53771

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    University of Lincoln (Research Outputs)

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