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Self-Adaptive Gradient-Based Thresholding Method for Coal Fire Detection Using ASTER Thermal Infrared Data, Part I: Methodology and Decadal Change Detection

机译:基于ASTER热红外数据的基于自适应梯度阈值的煤火检测方法,第一部分:方法和年代际变化检测

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Coal fires that are induced by natural spontaneous combustion or result from human activities occurring on the surface and in underground coal seams destroy coal resources and cause serious environmental degradation. Thermal infrared image data, which directly measure surface temperature, can be an important tool to map coal fires over large areas. As the first of two parts introducing our coal fire detection method, this paper proposes a self-adaptive threshold-based approach for coal fire detection using ASTER thermal infrared data: the self-adaptive gradient-based thresholding method (SAGBT). This method is based on an assumption that the attenuation of temperature along the coal fire’s boundaries generates considerable numbers of spots with extremely high gradient values. The SAGBT method applied mathematical morphology thinning to skeletonize the potential high gradient buffers into the extremely high gradient lines, which provides a self-adaptive mechanism to generate thresholds according to the thermal spatial patterns of the images. The final threshold was defined as an average temperature value reading from the high temperature buffers (segmented by 1.0 σ from the mean) and along a sequence of extremely high gradient lines (thinned from the potential high gradient buffers and segmented within the lower bounds, ranging from 0.5 σ to 1.5 σ and with an upper bound of 3.2 σ, where σ is the standard deviation), marking the coal fire areas. The SAGBT method used the basic outer boundary of the coal-bearing strata to simply exclude false alarms. The intermediate thresholds reduced the coupling with the temperature and converged by changing the potential high gradient buffers. This simple approach can be economical and accurate in identifying coal fire areas. In addition, it allows for the identification of thresholds using multiple ASTER TIR scenes in a consistent and uniform manner, and supports long-term coal fire change analyses using historical images in local areas. This paper focuses on the introduction of the methodology. Furthermore, an improvement to SAGBT is proposed. In a subsequent paper, subtitled “Part 2, Validation and Sensitivity Analysis,” we address satellite-field simultaneous observations and report comparisons between the retrieved thermal anomalies and field measurements in different aspects to prove that the coal fires are separable by the SAGBT method. These comparisons allowed us to estimate the accuracy and biases of the SAGBT method. As an application of the SAGBT, a relationship between coal fires’ decadal variation and coal production was also examined. Our work documented a total area increase in the beginning of 2003, which correlates with increased mining activities and the rapid increase of energy consumption in China during the decade (2001–2011). Additionally, a decrease in the total coal fire area is consistent with the nationally sponsored fire suppression efforts during 2007–2008. It demonstrated the applicability of SAGBT method for long-term change detection with multi-temporal images.
机译:自然自燃或人为活动引起的煤火在地面和地下煤层中发生,会破坏煤炭资源并造成严重的环境退化。直接测量表面温度的红外热图像数据可能是绘制大面积煤火图的重要工具。作为介绍煤炭火灾探测方法的两部分中的第一部分,本文提出了一种基于阈值的基于ASTER热红外数据的煤炭火灾探测方法:自适应梯度阈值法(SAGBT)。该方法基于以下假设:沿着煤火边界的温度衰减会生成大量具有极高梯度值的斑点。 SAGBT方法应用数学形态学细化来将潜在的高梯度缓冲区骨架化为极高的梯度线,这提供了一种自适应机制来根据图像的热空间模式生成阈值。最终阈值定义为从高温缓冲液中读取的平均温度值(与平均值相差1.0σ),并沿着一系列极高的梯度线(从潜在的高梯度缓冲液中变细并在下限内进行分段)从0.5σ到1.5σ,上限为3.2σ,其中σ为标准偏差),标志着燃煤区域。 SAGBT方法使用含煤地层的基本外边界来简单地排除误报。中间阈值减少了与温度的耦合,并通过更改潜在的高梯度缓冲区收敛。这种简单的方法在识别燃煤火灾区域方面既经济又准确。此外,它允许使用一致且统一的方式使用多个ASTER TIR场景识别阈值,并支持使用本地历史图像进行长期煤火变化分析。本文着重介绍该方法。此外,提出了对SAGBT的改进。在随后的副标题为“第2部分,验证和敏感性分析”的论文中,我们讨论了卫星现场同时观测,并报告了在不同方面对取回的热异常和现场测量值之间的比较,以证明通过SAGBT方法可以分离出煤火。这些比较使我们能够估计SAGBT方法的准确性和偏差。作为SAGBT的一种应用,还研究了煤火年代际变化与煤炭产量之间的关系。我们的工作记录了2003年初的总面积增加,这与十年(2001-2011年)期间中国的采矿活动增加和能源消耗的快速增加有关。此外,煤炭火场总面积的减少与国家赞助的2007-2008年灭火行动相一致。证明了SAGBT方法在多时相图像中进行长期变化检测的适用性。

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