Indonesian Journal of Electrical Engineering and Computer Science
Vol 33, No 3: March 2024

SEM and TEM images’ dehazing using multiscale progressive feature fusion techniques

Chellapilla V. K. N. S. N. Moorthy (Vasavi College of Engineering)
Mukesh Kumar Tripathi (Vardhaman College of Engineering)
Suvarna Joshi (DESIGN and Technology University)
Ashwini Shinde (Nutan College of Engineering and Research)
Tejaswini Kishor Zope (Nutan College of Engineering and Research)
Vaibhavi Umesh Avachat (Nutan College of Engineering and Research)



Article Info

Publish Date
01 Mar 2024

Abstract

We present a highly effective algorithm for image dehazing that leverages the valuable information within the hazy image to guide the haze removal process. Our proposed algorithm begins by employing a neural network that has been trained to establish a mapping between hazy images and their corresponding clear versions. This network learns to identify the shared structural elements and patterns between hazy and clear images through the training process. To enhance the utilization of guidance information from the generated reference image, we introduce a progressive feature fusion module that combines the features extracted from the hazy image and the reference image. Our proposed algorithm is an effective solution for image dehazing, as it capitalizes on the guidance information in the hazy appearance. By combining the strengths of deep learning, progressive feature fusion, and end-to-end training, we achieve impressive results in restoring clear images from hazy counterparts. The practical applicability of our algorithm is further validated by its success on benchmark data sets and real-world SEM and TEM images.

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