马尔可夫随机场在无人机vhir数据城市土地覆盖分类中的实现

Q4 Social Sciences
J. Pratomo, Triyoga Widiastomo
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引用次数: 1

摘要

无人驾驶飞行器(UAV)在城市规划、搜救和监视等各个领域的使用迅速增长。与卫星图像相比,从无人机捕获图像具有许多优点。例如,可以获得更高的空间分辨率和较小的大气变化影响。然而,由于城市土地覆盖的复杂性,城市地物分类存在困难。最大似然分类(MLC)的使用有局限性,因为它是基于像素值正态分布的假设,而实际上,城市特征不是正态分布的。使用马尔可夫随机场(MRF)进行城市土地覆盖分类有其优点,因为它假设相邻像素有更高的概率被分类为同一类而不是不同的类。本研究旨在确定平滑度(λ)和更新温度(T upd)对MRF精度结果(κ)的影响。我们使用的无人机VHIR大小为587平方米,分辨率为6厘米,拍摄于印度尼西亚茂物摄政王。结果表明,kappa值(κ)随着平滑度(λ)的增大而成比例增大,达到最大值(κ)后,kappa值开始下降。使用更高的(T upd)导致更好的(κ),尽管它也导致更高的标准偏差(SD)。使用最优参数,MRF的(κ)比MLC略高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IMPLEMENTATION OF THE MARKOV RANDOM FIELD FOR URBAN LAND COVER CLASSIFICATION OF UAV VHIR DATA
The usage of Unmanned Aerial Vehicle (UAV) has grown rapidly in various fields, such as urban planning, search and rescue, and surveillance. Capturing images from UAV has many advantages compared with satellite imagery. For instance, higher spatial resolution and less impact from atmospheric variations can be obtained. However, there are difficulties in classifying urban features, due to the complexity of the urban land covers. The usage of Maximum Likelihood Classification (MLC) has limitations since it is based on the assumption of the normal distribution of pixel values, where, in fact, urban features are not normally distributed. There are advantages in using the Markov Random Field (MRF) for urban land cover classification as it assumes that neighboring pixels have a higher probability to be classified in the same class rather than a different class. This research aimed to determine the impact of the smoothness (λ) and the updating temperature (T upd ) on the accuracy result (κ) in MRF. We used a UAV VHIR sized 587 square meters, with six-centimetre resolution, taken in Bogor Regency, Indonesia. The result showed that the kappa value (κ) increases proportionally with the smoothness (λ) until it reaches the maximum (κ), then the value drops. The usage of higher (T upd ) has resulted in better (κ) although it also led to a higher Standard Deviations (SD). Using the most optimal parameter, MRF resulted in slightly higher (κ) compared with MLC.
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来源期刊
Geoplanning Journal of Geomatics and Planning
Geoplanning Journal of Geomatics and Planning Earth and Planetary Sciences-Computers in Earth Sciences
CiteScore
1.00
自引率
0.00%
发文量
5
审稿时长
4 weeks
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