Insights into Image Understanding: Segmentation Methods for Object Recognition and Scene Classification

Author:

Mohammed Sarfaraz Ahmed1ORCID,Ralescu Anca L.1

Affiliation:

1. Department of Computer Science, College of Engineering and Applied Science, University of Cincinnati, Cincinnati, OH 45221-0030, USA

Abstract

Image understanding plays a pivotal role in various computer vision tasks, such as extraction of essential features from images, object detection, and segmentation. At a higher level of granularity, both semantic and instance segmentation are necessary for fully grasping a scene. In recent times, the concept of panoptic segmentation has emerged as a field of study that unifies semantic and instance segmentation. This article sheds light on the pivotal role of panoptic segmentation as a visualization tool for understanding scene components, including object detection, categorization, and precise localization of scene elements. Advancements in achieving panoptic segmentation and suggested improvements to the predicted outputs through a top-down approach are discussed. Furthermore, datasets relevant to both scene recognition and panoptic segmentation are explored to facilitate a comparative analysis. Finally, the article outlines certain promising directions in image recognition and analysis by underlining the ongoing evolution in image understanding methodologies.

Publisher

MDPI AG

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