EISPY2D: An Open-Source Python Library for the Development and Comparison of Algorithms in Two-Dimensional Electromagnetic Inverse Scattering Problems
Andr\'e Costa Batista, Ricardo Adriano, Lucas S. Batista

TL;DR
EISPY2D is an open-source Python library that standardizes and facilitates the development, benchmarking, and comparison of algorithms for two-dimensional electromagnetic inverse scattering problems in microwave imaging.
Contribution
The library introduces a modular framework for microwave imaging algorithm development and benchmarking, including two new metrics for location and shape recovery.
Findings
First benchmarking tools for microwave imaging algorithms
Modular structure enables flexible case study design
Introduction of two new recovery metrics
Abstract
Microwave Imaging is an essential technique for reconstructing the electrical properties of an inaccessible medium. Many approaches have been proposed employing algorithms to solve the Electromagnetic Inverse Scattering Problem associated with this technique. In addition to the algorithm, one needs to implement adequate structures to represent the problem domain, the input data, the results of the adopted metrics, and experimentation routines. We introduce an open-source Python library that offers a modular and standardized framework for implementing and evaluating the performance of algorithms for the problem. Based on the implementation of fundamental components for the execution of algorithms, this library aims to facilitate the development and discussion of new methods. Through a modular structure organized into classes, researchers can design their case studies and benchmarking…
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Taxonomy
TopicsMicrowave Imaging and Scattering Analysis · Geophysical Methods and Applications · Soil Moisture and Remote Sensing
