...
首页> 外文期刊>GIScience & remote sensing >Normalizing shadows in multi-temporal aerial frame imagery using relative radiometric adjustments to support near-real-time change detection
【24h】

Normalizing shadows in multi-temporal aerial frame imagery using relative radiometric adjustments to support near-real-time change detection

机译:使用相对辐射度调整对多时空帧影像中的阴影进行归一化以支持近实时变化检测

获取原文
获取原文并翻译 | 示例
           

摘要

This study addresses the problem of shadows in multi-temporal imagery, which is a key issue with change detection approaches based on image comparison. We apply image-to-image radiometric normalizations including histogram matching (HM), mean-variance (MV) equalization, linear regression based on pseudo-invariant features (PIF-LR), and radiometric control sets (RCS) representing high- and low-reflectance extrema, for the novel purpose of normalizing brightness of transient shadows in high spatial resolution, bi-temporal, aerial frame image sets. Efficient shadow normalization is integral to remote sensing procedures that support disaster response efforts in a near-real-time fashion, including repeat station image (RSI) capture, wireless data transfer, shadow detection (as precursor to shadow normalization), and change detection based on image differencing and visual interpretation. We apply the normalization techniques to imagery of suburban scenes containing shadowed materials of varied spectral reflectance characteristics, whereby intensity (average of red, green, and blue spectral band values) under fully illuminated conditions is known from counterpart reference images (time-1 versus time-2). We evaluate the normalization results using stratified random pixel samples within transient shadows, considering central tendency and variance of differences in intensity relative to the unnormalized images. Overall, MV equalization yielded superior results in our tests, reducing the radiometric effects of shadowing by more than 85 percent. The HM and PIF-LR approaches showed slightly lower performance than MV, while the RCS approach proved unreliable among scenes and among stratified intensity levels. We qualitatively evaluate a shadow normalization based on MV equalization, describing its utility and limitations when applied in change detection. Application of image-to-image radiometric normalization for brightening shadowed areas in multi-temporal imagery in this study proved efficient and effective to support change detection.
机译:这项研究解决了多时间图像中的阴影问题,这是基于图像比较的变化检测方法的关键问题。我们应用图像到图像的辐射归一化,包括直方图匹配(HM),均方差(MV)均衡,基于伪不变特征的线性回归(PIF-LR)和代表高低的辐射控制集(RCS) -反射极值,用于在高空间分辨率,双时间航空帧图像集中归一化瞬态阴影的亮度的新颖目的。有效的阴影归一化是遥感程序不可或缺的一部分,这些遥感过程以近实时的方式支持灾难响应工作,包括重复站图像(RSI)捕获,无线数据传输,阴影检测(作为阴影归一化的前身)和基于变化检测的基础关于图像差异和视觉解释。我们将归一化技术应用于包含具有各种光谱反射特性的阴影材料的郊区场景的图像,从而可以从对应的参考图像(时间1与时间)获知完全照明条件下的强度(红色,绿色和蓝色光谱带值的平均值) -2)。我们使用瞬态阴影内的分层随机像素样本评估归一化结果,同时考虑相对于未归一化图像的集中趋势和强度差异方差。总体而言,MV均衡在我们的测试中产生了出色的结果,将阴影的辐射测量效果降低了85%以上。 HM和PIF-LR方法显示的性能略低于MV,而RCS方法在场景之间和分层强度级别之间却不可靠。我们定性评估基于MV均衡的阴影归一化,描述了其在变化检测中的用途和局限性。在这项研究中,将图像间图像辐射归一化在多时相图像中加亮阴影区域的应用证明有效且有效地支持了变化检测。

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