Measuring the Effect of Background on Classification and Feature Importance in Deep Learning for AV Perception

arXiv — cs.CVMonday, December 8, 2025 at 5:00:00 AM
  • A recent study published on arXiv investigates the impact of background elements on classification and feature importance in deep learning models, particularly in the context of autonomous vehicle perception. The research utilizes saliency methods like SHAP and GradCAM to analyze how input features influence classification outcomes, focusing on whether classifiers rely on relevant object pixels or background noise.
  • This development is significant as it addresses the challenge of overfitting in deep learning models, where reliance on background pixels may indicate a lack of robustness in classification tasks. By quantitatively assessing feature importance, the study aims to enhance the reliability of AI systems in critical applications such as traffic sign recognition.
  • The findings contribute to ongoing discussions in the AI community regarding the interpretability of deep learning models and the importance of distinguishing between relevant and irrelevant features. As AI systems become increasingly integrated into real-world applications, ensuring their reliability and transparency remains a pressing concern, paralleling advancements in areas like deepfake detection and self-supervised learning methods.
— via World Pulse Now AI Editorial System

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