王光远, 邓正栋, 路钊, 王大庆, 时玥, 许颢砾, 赵晓宁. 基于GF-6 PMS影像的积雪信息识别[J]. 红外技术, 2021, 43(6): 543-556.
引用本文: 王光远, 邓正栋, 路钊, 王大庆, 时玥, 许颢砾, 赵晓宁. 基于GF-6 PMS影像的积雪信息识别[J]. 红外技术, 2021, 43(6): 543-556.
WANG Guangyuan, DENG Zhengdong, LU Zhao, WANG Daqing, SHI Yue, XU Haoli, ZHAO Xiaoning. Snow Information Recognition based on GF-6 PMS Images[J]. Infrared Technology , 2021, 43(6): 543-556.
Citation: WANG Guangyuan, DENG Zhengdong, LU Zhao, WANG Daqing, SHI Yue, XU Haoli, ZHAO Xiaoning. Snow Information Recognition based on GF-6 PMS Images[J]. Infrared Technology , 2021, 43(6): 543-556.

基于GF-6 PMS影像的积雪信息识别

Snow Information Recognition based on GF-6 PMS Images

  • 摘要: 以黑龙江省哈尔滨市道外区为研究区,系统探讨分析了基于遥感的不同方法在积雪信息识别中的应用。首先,对研究区两个时相的高分六号(GF-6)多光谱相机(PMS)影像进行目视解译,掌握了研究区内地物类型和积雪分布特点。其次,基于目视解译结果,选取了8种典型地物类型,得到了“积雪”和“非雪”两类像元的光谱特征规律。再次,探讨分析了6种方法在积雪识别中的应用,利用精确率、召回率和F指数3个指标进行了精度评价。最后,提出了基于投票结果的最终识别结果判定方法,得到了研究区积雪信息最终识别结果。研究表明:①受下垫面和阴影的影响,研究区“同谱异物”和“同物异谱”现象普遍;②深度学习算法的识别效果最好,决策树法的识别效果相对较差;农田区的识别精度高于池塘区,误识别和漏识别的现象都相对较少;③基于投票结果的最终识别结果判定,可以有效改善单一识别方法存在的误识别和漏识别现象。

     

    Abstract: From the perspective of limited research on snow recognition in high spatial resolution optical remote sensing images, considering Daowai District of Harbin City as the research area, this paper systematically discusses and analyzes the application of different methods in snow information recognition. First, ground feature types and snow distribution characteristics were mastered through visual interpretation of GF-6 PMS images of two phases in the study area. Second, based on the results of visual interpretation, eight typical surface feature types were selected, and the spectral characteristics of "snow"and "non-snow"pixels were obtained. Third, the application of the six methods in snow recognition was discussed and analyzed. Accuracy was evaluated using three indexes: positive predictive value, recall rate, and F-score. Finally, a final recognition result judgment method based on voting results was developed, and the final recognition result of snow information in the study area was obtained. The results showed that, owing to the influence of the underlying surface and shadow, the phenomenon of "same spectrum foreign matter"and "same object different spectrum"was common in the study area, which interfered with the snow recognition process to a large extent. The recognition effect of the deep learning algorithm was the best, while that of the decision tree method was relatively poor; the recognition accuracy was higher for the farmland area than that for the pond area, and the phenomenon of false and missing recognitions was relatively less. The final recognition result judgment method based on voting results can effectively improve the phenomenon of false and missing recognitions in a single recognition method. This paper has important guiding significance for snow recognition based on high-spatial-resolution optical remote sensing images.

     

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