本文综述了多光谱和微波数据监测湖冰冻结、消融及冰厚的方法,并比较了各种方法的优缺点,最后运用MODIS和AMSR-E监测了纳木错2007/2008冬半年冰情。湖冰监测方法主要有阈值法和指数法。阈值法是根据冰水反射率、温度、后向散射系数等特征因子的不同直接区分冰水,精度较高,误差在5天以内。指数法主要是根据冰水波谱特性和极化特性,做波段运算后间接区分冰水。冰厚监测常采用经验公式法,用实测数据与反射率、极化比、亮温等建立关系式反演整个湖泊冰厚,此方法适用于特定的某个湖泊。冰厚识别是湖冰监测的难点,主动微波比多光谱数据更适合监测冰厚。从数据本身来讲,热红外、被动微波等高时间分辨率数据比可见光、主动微波等高空间分辨率影像更适合监测大面积湖泊冰情。基于多源遥感数据,发展自动反演算法将是湖冰遥感监测发展趋势之一。
This paper summarized and compared several methods of monitoring lake ice freezingon and breaking up and ice thickness by multi-spectral and microwave remote sensing data. Finally, we monitored the lake ice in Nam Co by two methods during the winter half year of 2007/ 2008. Generally, researchers usually take threshold and index methods to monitor lake ice. According to the differences between ice and water, such as their reflectivity, temperature and backward scattering coefficients, the threshold model can distinguish ice and water directly. It has a high precision with an error of less than 5 days. While the index method recognizes ice and water indirectly by calculations based on spectral and polarization characteristics of ice and water. Additionally, researchers use empirical correlations between ice thickness and its reflectivity, polarization, temperature brightness or other properties to invert thickness. Ice thickness recognition is difficult in lake ice monitoring. Active microwave data is more suitable for ice thickness monitoring than multi-spectral data. Data with high time resolution such as thermal infrared and passive microwave data is more suitable for monitoring lake ice with large areas than the data with high spatial resolutions such as visible, near infrared and active microwave data. Based on multi - source remote sensing data, automatic inversion algorithm will be one of the development trends of lake ice monitoring by remote sensing.