基于CYCLE-GAN的烧伤面积映射中OPTICAL-SAR数据特征转换

E. Çolak, F. Sunar
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引用次数: 0

摘要

摘要对于森林的管理和对生态系统影响的评估,火灾后焚烧区域的测绘对可持续环境和林业至关重要。虽然光学遥感数据由于其空间和时间分辨率而被广泛用于监测森林火灾,但它容易受到恶劣天气条件的限制。为了克服这一挑战,光学和合成孔径雷达(SAR)数据的互补使用是有益的,因为SAR可以在全天候条件下穿透云层并捕获图像。然而,合成孔径雷达缺乏进行森林火灾综合监测和过火面积测绘所需的光谱特征。为了克服这些局限性,本研究提出了一种基于循环一致生成对抗性网络(Cycle-GAN)的深度特征转换方法,通过结合光学和SAR数据进行烧伤面积映射。这种方法允许以单独的光学或SAR数据无法实现的精度水平检索感兴趣的精确信息。循环GAN使用循环结构将数据从一个域(光学)转移到另一个域中(SAR),进入相同的特征空间。因此,它可以保持其光谱特征,同时为监测森林火灾提供持续和当前的信息。为此,使用光学数据确定燃烧面积指数(BAI)、中红外燃烧指数(MIRBI)、归一化燃烧比(NBR),并使用Cycle GAN对SAR数据进行图像转换。通过将从光学数据确定的原始光谱燃烧指数进行关联,建立了从SAR确定的伪BAI、MIRBI和NBR光谱燃烧指数的准确性。结果表明,真实烧伤指数和生成的假烧伤指数之间存在显著相关性,特别是NBR指数的相关系数为0.93。此外,研究结果验证了生成的指数在准确表示和量化烧伤面积方面的有效性。
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CYCLE-GAN BASED FEATURE TRANSLATION FOR OPTICAL-SAR DATA IN BURNED AREA MAPPING
Abstract. For the management of the forest and the assessment of impacts on ecosystems, post-fire burned area mapping is crucial for sustainable environment and forestry. While optical remote sensing data has been extensively used for monitoring forest fires due to its spatial and temporal resolutions, it is susceptible to limitations imposed by poor weather conditions. To overcome this challenge, the complementary use of optical and Synthetic Aperture Radar (SAR) data is beneficial, as SAR can penetrate clouds and capture images in all-weather conditions. However, SAR lacks the necessary spectral features for comprehensive forest fire monitoring and burned area mapping. To overcome these limitations, this study proposes a Cycle-Consistent Generative Adversarial Networks (Cycle-GAN) based deep feature translation method for burned area mapping by combining optical and SAR data. This approach allows for the retrieval of precise information of interest with a level of precision that cannot be achieved by either optical or SAR data alone. The Cycle-GAN uses a cyclic structure to transfer data from one domain (optical) to another domain (SAR) into the same feature space. As a result, it can maintain its spectral characteristics while providing ongoing and current information for monitoring forest fires. For this purpose, Burn Area Index (BAI), Mid Infrared Burn Index (MIRBI), Normalised Burn Ratio (NBR) were determined using optical data and image translation was performed with Cycle-GAN on SAR data. The accuracy of the fake BAI, MIRBI and NBR spectral burn indices determined from the SAR was established by correlating the original spectral burn indices determined from the optical data. The results demonstrate a significant correlation between the real and generated fake burn indices, particularly with a noteworthy correlation coefficient of 0.93 observed for the NBR index. In addition, the findings validate the effectiveness of the generated indices in accurately representing and quantifying the extent of burned areas.
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CiteScore
1.70
自引率
0.00%
发文量
949
审稿时长
16 weeks
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