Jaccard Index in Ensemble Image Segmentation: An Approach

Daniel Ogwok, E. M. Ehlers
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引用次数: 1

Abstract

Many methods have been applied to image segmentation, including unsupervised, supervised, and even deep learning-based models. Semantic and instance segmentation are the two most widely researched forms of segmentation. It is of value to use multiple methods to segment an image. In this paper, we present an image segmentation ensemble methodology. Multiple image segmentation methods are applied to an image and merged to create one segmentation using the proposed method. The technique uses the Jaccard index algorithm, sometimes called the Jaccard similarity coefficient and commonly known as Intersection over Union (IoU). This resulted in better segmentation results than the respective individual segmentation methods. This experiment was applied to mathematical expression recognition (MER), with the expressions taken from blackboards with varying degrees of noise, and lighting conditions, from different classroom environments. A summary of empirical results from the segmentation of multiple images is presented in the paper.
Jaccard索引在集成图像分割中的应用
许多方法已经应用于图像分割,包括无监督、有监督,甚至是基于深度学习的模型。语义分词和实例分词是研究最广泛的两种分词形式。使用多种方法分割图像是有价值的。本文提出了一种图像分割集成方法。将多种图像分割方法应用于一幅图像,并使用该方法合并形成一个图像分割。该技术使用Jaccard索引算法,有时称为Jaccard相似系数,通常称为交联(IoU)。这导致了比各自的单独分割方法更好的分割结果。该实验应用于数学表情识别(MER),在不同的教室环境中,在不同程度的噪音和光照条件下,黑板上的表情。本文对多幅图像分割的实验结果进行了总结。
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