CVITFeb 15, 2024

A Comprehensive Review on Computer Vision Analysis of Aerial Data

arXiv:2402.09781v12 citationsh-index: 2
Originality Synthesis-oriented
AI Analysis

This is an incremental review paper that synthesizes existing knowledge for researchers and practitioners in aerial data analysis.

This paper provides a comprehensive review of computer vision tasks for aerial data analysis, covering fundamental aspects like object detection and tracking, pivotal tasks such as change detection and segmentation, and practical elements including datasets, architectures, and evaluation metrics.

With the emergence of new technologies in the field of airborne platforms and imaging sensors, aerial data analysis is becoming very popular, capitalizing on its advantages over land data. This paper presents a comprehensive review of the computer vision tasks within the domain of aerial data analysis. While addressing fundamental aspects such as object detection and tracking, the primary focus is on pivotal tasks like change detection, object segmentation, and scene-level analysis. The paper provides the comparison of various hyper parameters employed across diverse architectures and tasks. A substantial section is dedicated to an in-depth discussion on libraries, their categorization, and their relevance to different domain expertise. The paper encompasses aerial datasets, the architectural nuances adopted, and the evaluation metrics associated with all the tasks in aerial data analysis. Applications of computer vision tasks in aerial data across different domains are explored, with case studies providing further insights. The paper thoroughly examines the challenges inherent in aerial data analysis, offering practical solutions. Additionally, unresolved issues of significance are identified, paving the way for future research directions in the field of aerial data analysis.

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