Post-Deployment Adaptation with Access to Source Data via Federated Learning and Source-Target Remote Gradient Alignment

08/31/2023
by   Felix Wagner, et al.
0

Deployment of Deep Neural Networks in medical imaging is hindered by distribution shift between training data and data processed after deployment, causing performance degradation. Post-Deployment Adaptation (PDA) addresses this by tailoring a pre-trained, deployed model to the target data distribution using limited labelled or entirely unlabelled target data, while assuming no access to source training data as they cannot be deployed with the model due to privacy concerns and their large size. This makes reliable adaptation challenging due to limited learning signal. This paper challenges this assumption and introduces FedPDA, a novel adaptation framework that brings the utility of learning from remote data from Federated Learning into PDA. FedPDA enables a deployed model to obtain information from source data via remote gradient exchange, while aiming to optimize the model specifically for the target domain. Tailored for FedPDA, we introduce a novel optimization method StarAlign (Source-Target Remote Gradient Alignment) that aligns gradients between source-target domain pairs by maximizing their inner product, to facilitate learning a target-specific model. We demonstrate the method's effectiveness using multi-center databases for the tasks of cancer metastases detection and skin lesion classification, where our method compares favourably to previous work. Code is available at: https://github.com/FelixWag/StarAlign

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/07/2022

One Ring to Bring Them All: Towards Open-Set Recognition under Domain Shift

In this paper, we investigate open-set recognition with domain shift, wh...
research
02/10/2023

Federated Domain Adaptation via Gradient Projection

Federated Domain Adaptation (FDA) describes the federated learning setti...
research
03/29/2022

Instance Relation Graph Guided Source-Free Domain Adaptive Object Detection

Unsupervised Domain Adaptation (UDA) is an effective approach to tackle ...
research
04/28/2022

Covariance-aware Feature Alignment with Pre-computed Source Statistics for Test-time Adaptation

The accuracy of deep neural networks is degraded when the distribution o...
research
12/04/2018

Towards Continuous Domain adaptation for Healthcare

Deep learning algorithms have demonstrated tremendous success on challen...
research
07/01/2023

DeepMediX: A Deep Learning-Driven Resource-Efficient Medical Diagnosis Across the Spectrum

In the rapidly evolving landscape of medical imaging diagnostics, achiev...
research
01/18/2023

Universal Neural-Cracking-Machines: Self-Configurable Password Models from Auxiliary Data

We develop the first universal password model – a password model that, o...

Please sign up or login with your details

Forgot password? Click here to reset