Zhou Tao, Li Zhaofu, Pan Jianjun
College of Resources and Environmental Sciences, Nanjing Agricultural University, Nanjing 210095, Jiangsu, China.
Sensors (Basel). 2018 Jan 27;18(2):373. doi: 10.3390/s18020373.
This paper focuses on evaluating the ability and contribution of using backscatter intensity, texture, coherence, and color features extracted from Sentinel-1A data for urban land cover classification and comparing different multi-sensor land cover mapping methods to improve classification accuracy. Both Landsat-8 OLI and Hyperion images were also acquired, in combination with Sentinel-1A data, to explore the potential of different multi-sensor urban land cover mapping methods to improve classification accuracy. The classification was performed using a random forest (RF) method. The results showed that the optimal window size of the combination of all texture features was 9 × 9, and the optimal window size was different for each individual texture feature. For the four different feature types, the texture features contributed the most to the classification, followed by the coherence and backscatter intensity features; and the color features had the least impact on the urban land cover classification. Satisfactory classification results can be obtained using only the combination of texture and coherence features, with an overall accuracy up to 91.55% and a kappa coefficient up to 0.8935, respectively. Among all combinations of Sentinel-1A-derived features, the combination of the four features had the best classification result. Multi-sensor urban land cover mapping obtained higher classification accuracy. The combination of Sentinel-1A and Hyperion data achieved higher classification accuracy compared to the combination of Sentinel-1A and Landsat-8 OLI images, with an overall accuracy of up to 99.12% and a kappa coefficient up to 0.9889. When Sentinel-1A data was added to Hyperion images, the overall accuracy and kappa coefficient were increased by 4.01% and 0.0519, respectively.
本文重点评估利用从哨兵 - 1A数据中提取的后向散射强度、纹理、相干性和颜色特征进行城市土地覆盖分类的能力和贡献,并比较不同的多传感器土地覆盖制图方法以提高分类精度。还获取了陆地卫星 - 8 OLI和Hyperion图像,并与哨兵 - 1A数据相结合,以探索不同多传感器城市土地覆盖制图方法提高分类精度的潜力。分类使用随机森林(RF)方法进行。结果表明,所有纹理特征组合的最佳窗口大小为9×9,每个单独的纹理特征的最佳窗口大小不同。对于四种不同的特征类型,纹理特征对分类的贡献最大,其次是相干性和后向散射强度特征;颜色特征对城市土地覆盖分类的影响最小。仅使用纹理和相干性特征的组合即可获得令人满意的分类结果,总体精度分别高达91.55%,kappa系数高达0.8935。在哨兵 - 1A衍生特征的所有组合中,四个特征的组合具有最佳的分类结果。多传感器城市土地覆盖制图获得了更高的分类精度。与哨兵 - 1A和陆地卫星 - 8 OLI图像的组合相比,哨兵 - 1A和Hyperion数据的组合实现了更高的分类精度,总体精度高达99.12%,kappa系数高达0.9889。当将哨兵 - 1A数据添加到Hyperion图像中时,总体精度和kappa系数分别提高了4.01%和0.0519。