CVJun 12, 2024

A Labeled Array Distance Metric for Measuring Image Segmentation Quality

arXiv:2406.07851v12 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for efficient evaluation metrics in image segmentation, particularly for automated algorithm selection, but it is incremental as it builds on existing distance measurement concepts.

The authors tackled the problem of evaluating image segmentation algorithms by introducing two new distance metrics, LAD and MADLAD, for comparing labeled arrays, which operate with O(N) complexity and help identify optimal segmentation solutions in automated systems.

This work introduces two new distance metrics for comparing labeled arrays, which are common outputs of image segmentation algorithms. Each pixel in an image is assigned a label, with binary segmentation providing only two labels ('foreground' and 'background'). These can be represented by a simple binary matrix and compared using pixel differences. However, many segmentation algorithms output multiple regions in a labeled array. We propose two distance metrics, named LAD and MADLAD, that calculate the distance between two labeled images. By doing so, the accuracy of different image segmentation algorithms can be evaluated by measuring their outputs against a 'ground truth' labeling. Both proposed metrics, operating with a complexity of $O(N)$ for images with $N$ pixels, are designed to quickly identify similar labeled arrays, even when different labeling methods are used. Comparisons are made between images labeled manually and those labeled by segmentation algorithms. This evaluation is crucial when searching through a space of segmentation algorithms and their hyperparameters via a genetic algorithm to identify the optimal solution for automated segmentation, which is the goal in our lab, SEE-Insight. By measuring the distance from the ground truth, these metrics help determine which algorithm provides the most accurate segmentation.

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