Automated Resolution Selection for Image Segmentation
Fares Al-Qunaieer, Hamid R. Tizhoosh, Shahryar Rahnamayan

TL;DR
This paper presents an automated framework that selects optimal image resolutions for segmentation, balancing accuracy and computational efficiency, using a learning approach based on image features.
Contribution
It introduces a novel learning-based method for automatic resolution selection in image segmentation, improving speed while maintaining accuracy.
Findings
Selected resolutions enable faster segmentation.
The method retains at least original accuracy.
Applicable across different datasets and algorithms.
Abstract
It is well-known in image processing that computational cost increases rapidly with the number and dimensions of the images to be processed. Several fields, such as medical imaging, routinely use numerous very large images, which might also be 3D and/or captured at several frequency bands, all adding to the computational expense. Multiresolution analysis is a method of increasing the efficiency of the segmentation process. One multiresolution approach is the coarse-to-fine segmentation strategy, whereby the segmentation starts at a coarse resolution and is then fine-tuned during subsequent steps. The starting resolution for segmentation is generally selected arbitrarily with no clear selection criteria. The research reported in this paper showed that starting from different resolutions for image segmentation results in different accuracies and computational times, even for images of the…
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Taxonomy
TopicsMedical Image Segmentation Techniques · Image Processing Techniques and Applications · Image Retrieval and Classification Techniques
