Automated Two-Step Seamline Detection for Generating Large-Scale Orthophoto Mosaics from Drone Images

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Autorschaft

Externe Organisationen

  • Shaoxing University
  • K.N. Toosi University of Technology (KNTU)
  • Saveetha University (SIMATS)
Plum Print visual indicator of research metrics
  • Citations
    • Citation Indexes: 5
  • Captures
    • Readers: 9
  • Mentions
    • Blog Mentions: 1
    • News Mentions: 1
see details

Details

OriginalspracheEnglisch
Aufsatznummer903
FachzeitschriftRemote sensing
Jahrgang16
Ausgabenummer5
PublikationsstatusVeröffentlicht - 4 März 2024

Abstract

To generate an orthophoto mosaic from a collection of aerial images, the original images are first orthorectified individually using a Digital Surface Model (DSM). Then, they are stitched together along some determined seamlines to form the orthophoto mosaic. Determining appropriate seamlines is a critical process, as it affects the visual and geometric quality of the results. The stitching process can usually be done in frame-to-frame or multi-frame modes. Although the latter is more efficient, both still involve a lot of pre-processing, such as creating individual orthophotos, image registration, and overlap extraction. This paper presents a novel coarse-to-fine approach that directly determines the seamline network without such pre-processing. Our method has been specifically applied for UAV photogrammetry projects where, due to the large number of images and the corresponding overlaps, the orthophoto mosaic generation can be very challenging and time-consuming. We established the seamlines simultaneously for all the images through a two-step process. First, a DSM was generated, and a low-resolution grid was overlayed. Then, for each grid point, an optimal image was selected. Then, the grid cells are grouped into polygons based on their corresponding optimal image. Boundaries of these polygons established our seamline network. Thereafter, to generate the orthophoto mosaic, we overlayed a higher/full resolution grid on the top of the DSM, the optimal image of each point of which was quickly identified via our low-resolution polygons. In this approach, not only seamlines were automatically generated, but also were the need for the creation, registration, and overlap extraction of individual orthophotos. Our method was systematically compared with a conventional frame-to-frame (CF) technique from different aspects, including the number of double-mapped areas, discontinuities across the seamlines network, and the amount of processing time. The outcomes revealed a 46% decrease in orthophoto generation time and a notable reduction in the number of double-mapped areas, sawtooth effects, and object discontinuities within the constructed orthophoto mosaic.

ASJC Scopus Sachgebiete

Zitieren

Automated Two-Step Seamline Detection for Generating Large-Scale Orthophoto Mosaics from Drone Images. / Varshosaz, Masood; Sajadian, Maryam; Pirasteh, Saied et al.
in: Remote sensing, Jahrgang 16, Nr. 5, 903, 04.03.2024.

Publikation: Beitrag in FachzeitschriftArtikelForschungPeer-Review

Varshosaz M, Sajadian M, Pirasteh S, Moghimi A. Automated Two-Step Seamline Detection for Generating Large-Scale Orthophoto Mosaics from Drone Images. Remote sensing. 2024 Mär 4;16(5):903. doi: 10.3390/rs16050903
Varshosaz, Masood ; Sajadian, Maryam ; Pirasteh, Saied et al. / Automated Two-Step Seamline Detection for Generating Large-Scale Orthophoto Mosaics from Drone Images. in: Remote sensing. 2024 ; Jahrgang 16, Nr. 5.
Download
@article{57b3662b42b84822a5ee4bfad1c13d80,
title = "Automated Two-Step Seamline Detection for Generating Large-Scale Orthophoto Mosaics from Drone Images",
abstract = "To generate an orthophoto mosaic from a collection of aerial images, the original images are first orthorectified individually using a Digital Surface Model (DSM). Then, they are stitched together along some determined seamlines to form the orthophoto mosaic. Determining appropriate seamlines is a critical process, as it affects the visual and geometric quality of the results. The stitching process can usually be done in frame-to-frame or multi-frame modes. Although the latter is more efficient, both still involve a lot of pre-processing, such as creating individual orthophotos, image registration, and overlap extraction. This paper presents a novel coarse-to-fine approach that directly determines the seamline network without such pre-processing. Our method has been specifically applied for UAV photogrammetry projects where, due to the large number of images and the corresponding overlaps, the orthophoto mosaic generation can be very challenging and time-consuming. We established the seamlines simultaneously for all the images through a two-step process. First, a DSM was generated, and a low-resolution grid was overlayed. Then, for each grid point, an optimal image was selected. Then, the grid cells are grouped into polygons based on their corresponding optimal image. Boundaries of these polygons established our seamline network. Thereafter, to generate the orthophoto mosaic, we overlayed a higher/full resolution grid on the top of the DSM, the optimal image of each point of which was quickly identified via our low-resolution polygons. In this approach, not only seamlines were automatically generated, but also were the need for the creation, registration, and overlap extraction of individual orthophotos. Our method was systematically compared with a conventional frame-to-frame (CF) technique from different aspects, including the number of double-mapped areas, discontinuities across the seamlines network, and the amount of processing time. The outcomes revealed a 46% decrease in orthophoto generation time and a notable reduction in the number of double-mapped areas, sawtooth effects, and object discontinuities within the constructed orthophoto mosaic.",
keywords = "differential rectification, double mapping effect, drone images, DSM, optimization, orthophoto mosaic, seamline network",
author = "Masood Varshosaz and Maryam Sajadian and Saied Pirasteh and Armin Moghimi",
note = "Publisher Copyright: {\textcopyright} 2024 by the authors.",
year = "2024",
month = mar,
day = "4",
doi = "10.3390/rs16050903",
language = "English",
volume = "16",
journal = "Remote sensing",
issn = "2072-4292",
publisher = "Multidisciplinary Digital Publishing Institute",
number = "5",

}

Download

TY - JOUR

T1 - Automated Two-Step Seamline Detection for Generating Large-Scale Orthophoto Mosaics from Drone Images

AU - Varshosaz, Masood

AU - Sajadian, Maryam

AU - Pirasteh, Saied

AU - Moghimi, Armin

N1 - Publisher Copyright: © 2024 by the authors.

PY - 2024/3/4

Y1 - 2024/3/4

N2 - To generate an orthophoto mosaic from a collection of aerial images, the original images are first orthorectified individually using a Digital Surface Model (DSM). Then, they are stitched together along some determined seamlines to form the orthophoto mosaic. Determining appropriate seamlines is a critical process, as it affects the visual and geometric quality of the results. The stitching process can usually be done in frame-to-frame or multi-frame modes. Although the latter is more efficient, both still involve a lot of pre-processing, such as creating individual orthophotos, image registration, and overlap extraction. This paper presents a novel coarse-to-fine approach that directly determines the seamline network without such pre-processing. Our method has been specifically applied for UAV photogrammetry projects where, due to the large number of images and the corresponding overlaps, the orthophoto mosaic generation can be very challenging and time-consuming. We established the seamlines simultaneously for all the images through a two-step process. First, a DSM was generated, and a low-resolution grid was overlayed. Then, for each grid point, an optimal image was selected. Then, the grid cells are grouped into polygons based on their corresponding optimal image. Boundaries of these polygons established our seamline network. Thereafter, to generate the orthophoto mosaic, we overlayed a higher/full resolution grid on the top of the DSM, the optimal image of each point of which was quickly identified via our low-resolution polygons. In this approach, not only seamlines were automatically generated, but also were the need for the creation, registration, and overlap extraction of individual orthophotos. Our method was systematically compared with a conventional frame-to-frame (CF) technique from different aspects, including the number of double-mapped areas, discontinuities across the seamlines network, and the amount of processing time. The outcomes revealed a 46% decrease in orthophoto generation time and a notable reduction in the number of double-mapped areas, sawtooth effects, and object discontinuities within the constructed orthophoto mosaic.

AB - To generate an orthophoto mosaic from a collection of aerial images, the original images are first orthorectified individually using a Digital Surface Model (DSM). Then, they are stitched together along some determined seamlines to form the orthophoto mosaic. Determining appropriate seamlines is a critical process, as it affects the visual and geometric quality of the results. The stitching process can usually be done in frame-to-frame or multi-frame modes. Although the latter is more efficient, both still involve a lot of pre-processing, such as creating individual orthophotos, image registration, and overlap extraction. This paper presents a novel coarse-to-fine approach that directly determines the seamline network without such pre-processing. Our method has been specifically applied for UAV photogrammetry projects where, due to the large number of images and the corresponding overlaps, the orthophoto mosaic generation can be very challenging and time-consuming. We established the seamlines simultaneously for all the images through a two-step process. First, a DSM was generated, and a low-resolution grid was overlayed. Then, for each grid point, an optimal image was selected. Then, the grid cells are grouped into polygons based on their corresponding optimal image. Boundaries of these polygons established our seamline network. Thereafter, to generate the orthophoto mosaic, we overlayed a higher/full resolution grid on the top of the DSM, the optimal image of each point of which was quickly identified via our low-resolution polygons. In this approach, not only seamlines were automatically generated, but also were the need for the creation, registration, and overlap extraction of individual orthophotos. Our method was systematically compared with a conventional frame-to-frame (CF) technique from different aspects, including the number of double-mapped areas, discontinuities across the seamlines network, and the amount of processing time. The outcomes revealed a 46% decrease in orthophoto generation time and a notable reduction in the number of double-mapped areas, sawtooth effects, and object discontinuities within the constructed orthophoto mosaic.

KW - differential rectification

KW - double mapping effect

KW - drone images

KW - DSM

KW - optimization

KW - orthophoto mosaic

KW - seamline network

UR - http://www.scopus.com/inward/record.url?scp=85187489303&partnerID=8YFLogxK

U2 - 10.3390/rs16050903

DO - 10.3390/rs16050903

M3 - Article

AN - SCOPUS:85187489303

VL - 16

JO - Remote sensing

JF - Remote sensing

SN - 2072-4292

IS - 5

M1 - 903

ER -

Von denselben Autoren