2023
DOI: 10.20944/preprints202312.2087.v1
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Computer Vision with Causal Inference/Learning: A Deep Learning Approach Notes

Kailash Hambarde

Abstract: Deep learning heavily relies on statistical correlations to drive artificial intelligence (AI) innovations, particularly in computer vision applications like autonomous driving and robotics. However, despite providing a solid foundation for deep learning, these statistical correlations can be vulnerable to unforeseen and uncontrolled factors. The lack of prior knowledge guidance can result in spurious correlations, introducing confounding factors and affecting the model's robustness. To address this challenge,… Show more

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