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Semantic image segmentation (SiS) plays a fundamental role towards
a general understanding of the image content and context, in a
broad variety of computer vision applications, thus providing key
information for the global understanding of an image. This
monograph summarizes two decades of research in the field of SiS,
where a literature review of solutions starting from early
historical methods is proposed, followed by an overview of more
recent deep learning methods, including the latest trend of using
transformers. The publication is complemented by presenting
particular cases of the weak supervision and side machine learning
techniques that can be used to improve the semantic segmentation,
such as curriculum, incremental or self-supervised learning.
State-of-the-art SiS models rely on a large amount of annotated
samples, which are more expensive to obtain than labels for tasks
such as image classification. Since unlabeled data is significantly
cheaper to obtain, it is not surprising that Unsupervised Domain
Adaptation (UDA) reached a broad success within the semantic
segmentation community. Therefore, a second core contribution of
this monograph is to summarize five years of a rapidly growing
field, Domain Adaptation for Semantic Image Segmentation (DASiS),
which embraces the importance of semantic segmentation itself and a
critical need of adapting segmentation models to new environments.
In addition to providing a comprehensive survey on DASiS
techniques, newer trends such as multi-domain learning, domain
generalization, domain incremental learning, test-time adaptation
and source-free domain adaptation are also presented. The
publication concludes by describing datasets and benchmarks most
widely used in SiS and DASiS and briefly discusses related tasks
such as instance and panoptic image segmentation, as well as
applications such as medical image segmentation. This monograph
should provide researchers across academia and industry with a
comprehensive reference guide, and will help them in fostering new
research directions in the field.
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