首页> 外文会议>Conference on remote sensing for agriculture, ecosystems, and hydrology >Fire detection from hypespectral data using neural network approach
【24h】

Fire detection from hypespectral data using neural network approach

机译:使用神经网络方法从短波特数据中的火灾检测

获取原文

摘要

This study describes an application of artificial neural networks for the recognition of flaming areas using hyper-spectral remote sensed data. Satellite remote sensing is considered an effective and safe way to monitor active fires for environmental and people safeguarding. Neural networks are an effective and consolitaded technique for the classification of satellite images. Moreover, once well trained, they prove to be very fast in the application stage for a rapid response. At flaming temperature, thanks to its low excitation energy (about 4.34 eV), potassium (K) ionize with a unique doublet emission features. This emission features can be detected remotely providing a detection map of active fire which allows in principle to separate flaming from smouldering areas of vegetation even in presence of smoke. For this study a normalised Advanced K Band Difference (AKBD) has been applied to airborne hyper spectral sensor covering a range of 400-970 nm with resolution 2.9 nm. A back propagation neural network was used for the recognition of active fires affecting the hyperspectral image. The network was trained using all channels of sensor as inputs, and the corresponding AKBD indexes as target output. In order to evaluate its generalization capabilities, the neural network was validated on two independent data sets of hyperspectral images, not used during neural network training phase. The validation results for the independent data-sets had an overall accuracy round 100% for both image and a few commission errors (0.1%), therefore demonstrating the feasibility of estimating the presence of active fires using a neural network approach. Although the validation of the neural network classifier had a few commission errors, the producer accuracies were lower due to the presence of omission errors. Image analysis revealed that those false negatives lie in "smoky" portion fire fronts, and due to the low intensity of the signal. The proposed method can be considered effective both in terms of classification accuracy and generalization capability. In particular our approach proved to be robust in the rejection of false positives, often corresponding to noisy or smoke pixels, whose presence in hyperspectral images can often undermine the performance of traditional classification algorithms. In order to improve neural network performance, future activities will include also the exploiting of hyperspectral images in the shortwave infrared region of the electromagnetic spectrum, covering wavelengths from 1400 to 2500 nm, which include significant emitted radiance from fire.
机译:该研究描述了使用超光谱遥感数据识别火焰区域的人工神经网络的应用。卫星遥感被认为是监控环境和人员保护的主动火灾的有效和安全的方法。神经网络是一种用于卫星图像分类的有效且Consolina的技术。此外,一旦训练有素,它们就会在应用程序阶段被证明是快速的反应。在燃烧温度下,由于其低励磁能量(约4.34eV),钾(k)电离,具有独特的双重发射特征。可以远程检测到这种排放特征,从而提供有源火灾的检测图,其原则上允许在烟雾的存在下从植被的闷烧区域分开燃烧。在这项研究中的归一化高级K频差(AKBD)已被施加到覆盖的范围内的400-970纳米的分辨率2.9纳米空降超光谱传感器。反向传播神经网络用于识别影响高光谱图像的主动火灾。使用传感器的所有通道作为输入,网络培训,以及相应的AKBD索引作为目标输出。为了评估其泛化能力,在神经网络训练阶段的两个独立数据集上验证了神经网络。独立数据集的验证结果对图像的整体准确性为100%,而且少数佣金误差(0.1%),因此表明使用神经网络方法估计有源火灾存在的可行性。虽然神经网络分类器的验证有一些佣金误差,但由于存在遗漏误差,生产者的准确性降低。图像分析显示,这些假底片位于“烟熏”部分火灾方面,并且由于信号的低强度。在分类准确性和泛化能力方面,可以认为该方法可以被认为是有效的。特别地,我们的方法被证明在抑制误报的抑制中,通常对应于噪声或烟雾像素,其在高光谱图像中的存在通常可以破坏传统分类算法的性能。为了提高神经网络性能,未来的活动也将包括利用电磁谱的短波红外区域中的高光谱图像,从1400到2500nm覆盖波长,这包括从火的显着发射的辐射。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号