1 research outputs found
An Abstraction Model for Semantic Segmentation Algorithms
Semantic segmentation is a process of classifying each pixel in the image.
Due to its advantages, sematic segmentation is used in many tasks such as
cancer detection, robot-assisted surgery, satellite image analysis,
self-driving car control, etc. In this process, accuracy and efficiency are the
two crucial goals for this purpose, and 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 reducing
the costs. The diversity of the implemented approaches for semantic
segmentation makes it difficult for researches to achieve a comprehensive view
of the field. To offer a comprehensive view, in this paper, an abstraction
model for the task of semantic segmentation is offered. The proposed framework
consists of four general blocks that cover the majority of majority of methods
that have been proposed for semantic segmentation. We also compare different
approaches and consider the importance of each part in the overall performance
of a method.Comment: 6 pages 2 figure