Mitigating Bias: Enhancing Image Classification by Improving Model Explanations
Raha Ahmadi, Mohammad Javad Rajabi, Mohammad Khalooie, Mohammad, Sabokrou

TL;DR
This paper introduces a novel method to improve image classification by guiding models to focus more on foreground objects, thereby reducing background bias and enhancing accuracy.
Contribution
We propose a new approach that encourages models to attend to foreground regions during training, improving focus on main objects and reducing reliance on background cues.
Findings
Enhanced classification accuracy on benchmark datasets.
Foreground attention mechanisms outperform baseline models.
Improved model robustness against background bias.
Abstract
Deep learning models have demonstrated remarkable capabilities in learning complex patterns and concepts from training data. However, recent findings indicate that these models tend to rely heavily on simple and easily discernible features present in the background of images rather than the main concepts or objects they are intended to classify. This phenomenon poses a challenge to image classifiers as the crucial elements of interest in images may be overshadowed. In this paper, we propose a novel approach to address this issue and improve the learning of main concepts by image classifiers. Our central idea revolves around concurrently guiding the model's attention toward the foreground during the classification task. By emphasizing the foreground, which encapsulates the primary objects of interest, we aim to shift the focus of the model away from the dominant influence of the…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Anomaly Detection Techniques and Applications · Explainable Artificial Intelligence (XAI)
MethodsFocus
