Depth Estimation for Integral Imaging Microscopy Using a 3D-2D CNN with a Weighted Median Filter

Sensors (Basel). 2022 Jul 15;22(14):5288. doi: 10.3390/s22145288.

Abstract

This study proposes a robust depth map framework based on a convolutional neural network (CNN) to calculate disparities using multi-direction epipolar plane images (EPIs). A combination of three-dimensional (3D) and two-dimensional (2D) CNN-based deep learning networks is used to extract the features from each input stream separately. The 3D convolutional blocks are adapted according to the disparity of different directions of epipolar images, and 2D-CNNs are employed to minimize data loss. Finally, the multi-stream networks are merged to restore the depth information. A fully convolutional approach is scalable, which can handle any size of input and is less prone to overfitting. However, there is some noise in the direction of the edge. A weighted median filtering (WMF) is used to acquire the boundary information and improve the accuracy of the results to overcome this issue. Experimental results indicate that the suggested deep learning network architecture outperforms other architectures in terms of depth estimation accuracy.

Keywords: 3D convolutional neural network; deep learning; depth estimation; integral imaging microscopy; light-filed microscopy; machine intelligence.

MeSH terms

  • Microscopy*
  • Neural Networks, Computer*