CVJan 13, 2023

A Comprehensive Review of Modern Object Segmentation Approaches

arXiv:2301.07499v148 citationsh-index: 12
Originality Synthesis-oriented
AI Analysis

It provides a comprehensive overview for researchers and practitioners in fields like healthcare and robotics, but it is incremental as a review paper.

This monograph reviews traditional and modern object segmentation approaches, comparing their strengths, weaknesses, and utilities, and discusses future research directions.

Image segmentation is the task of associating pixels in an image with their respective object class labels. It has a wide range of applications in many industries including healthcare, transportation, robotics, fashion, home improvement, and tourism. Many deep learning-based approaches have been developed for image-level object recognition and pixel-level scene understanding-with the latter requiring a much denser annotation of scenes with a large set of objects. Extensions of image segmentation tasks include 3D and video segmentation, where units of voxels, point clouds, and video frames are classified into different objects. We use "Object Segmentation" to refer to the union of these segmentation tasks. In this monograph, we investigate both traditional and modern object segmentation approaches, comparing their strengths, weaknesses, and utilities. We examine in detail the wide range of deep learning-based segmentation techniques developed in recent years, provide a review of the widely used datasets and evaluation metrics, and discuss potential future research directions.

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