Improving Object Detection by Modifying Synthetic Data with Explainable AI
Nitish Mital, Simon Malzard, Richard Walters, Celso M. De Melo,, Raghuveer Rao, Victoria Nockles

TL;DR
This paper presents an explainable AI-guided human-in-the-loop framework for modifying synthetic data to enhance object detection, demonstrating improved vehicle detection in infrared imagery with reduced human effort.
Contribution
It introduces a novel XAI-based approach to efficiently guide synthetic data modification, allowing both increased and decreased realism to optimize model performance.
Findings
Synthetic data improved vehicle detection by 4.6%.
XAI-guided modifications further increased accuracy by 1.5%.
Framework reduces human effort in dataset design.
Abstract
Limited real-world data severely impacts model performance in many computer vision domains, particularly for samples that are underrepresented in training. Synthetically generated images are a promising solution, but 1) it remains unclear how to design synthetic training data to optimally improve model performance (e.g, whether and where to introduce more realism or more abstraction) and 2) the domain expertise, time and effort required from human operators for this design and optimisation process represents a major practical challenge. Here we propose a novel conceptual approach to improve the efficiency of designing synthetic images, by using robust Explainable AI (XAI) techniques to guide a human-in-the-loop process of modifying 3D mesh models used to generate these images. Importantly, this framework allows both modifications that increase and decrease realism in synthetic data,…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI)
MethodsYou Only Look Once
