An Abstraction of Semantic Segmentation Algorithms

Reihaneh Teymoori, Zahra Nabizadeh, N. Karimi, S. Samavi
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Abstract

semantic segmentation is a process of classifying each pixel in the image. Due to its advantages, semantic segmentation is used in many tasks like cancer detection, robot-assisted surgery, satellite images, self-driving car, etc. in this process, accuracy and efficiency are the two crucial goals for this purpose, there are several state-of-the-art neural networks. In each method, by employing different techniques, new solutions have been presented for increasing efficiency, accuracy, and saving the costs. The diversity of the implemented approaches for semantic segmentation makes it difficult for researchers to achieve a comprehensive view. Due to this, in this paper, an abstract framework for semantic segmentation is offered. This framework consists of 4 blocks that cover the majority of the methods that have been proposed for semantic segmentation. In this paper, we also attempt to compare different approaches and consider the importance of each part in semantic segmentation. Although our proposed framework considers most of the previous methods, maybe a few papers need new blocks.
语义分割算法的一种抽象
语义分割是对图像中每个像素进行分类的过程。由于其优势,语义分割被用于许多任务,如癌症检测,机器人辅助手术,卫星图像,自动驾驶汽车等,在这个过程中,准确性和效率是两个至关重要的目标,有几个最先进的神经网络。在每种方法中,通过采用不同的技术,提出了提高效率、准确性和节省成本的新解决方案。语义分割实现方法的多样性使得研究人员难以获得一个全面的观点。基于此,本文提出了一个语义分割的抽象框架。该框架由4个模块组成,涵盖了大多数已经提出的语义分割方法。在本文中,我们还尝试比较不同的方法,并考虑每个部分在语义分割中的重要性。虽然我们提出的框架考虑了大多数以前的方法,但可能有一些论文需要新的模块。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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