A Robust Epipolar-Domain Regularization Algorithm for Light Field Depth Estimation
A Robust Epipolar-Domain Regularization Algorithm for Light Field Depth Estimation
Robust depth estimation in light field imaging remains a critical challenge for pattern recognition applications such as augmented reality, biomedical imaging, and scene reconstruction. While existing approaches often rely heavily on deep convolutional neural networks, they tend to incur high computational costs and struggle in noisy real-world environments. This paper proposes a novel lightweight depth estimation pipeline that integrates light field-based disparity information with a directed random walk refinement algorithm. Unlike traditional CNN-based methods, our approach enhances depth map consistency without requiring extensive training or large-scale datasets. The proposed method was evaluated on the 4D Light Field Benchmark dataset and a diverse set of real-world images. Experimental results indicate that while performance slightly declines under uncontrolled conditions, the algorithm consistently maintains low computational complexity and competitive accuracy compared to state-of-the-art deep learning models. These findings highlight the potential of our method as a robust and efficient alternative for depth estimation and segmentation in light field imaging. The work provides insights into practical algorithm design for light field-based pattern recognition and opens new directions for integrating probabilistic graph models with depth sensing frameworks.
Noor Islam S. Mohammad
计算技术、计算机技术
Noor Islam S. Mohammad.A Robust Epipolar-Domain Regularization Algorithm for Light Field Depth Estimation[EB/OL].(2025-08-12)[2025-08-24].https://arxiv.org/abs/2508.08900.点此复制
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