Cassetti Julia, Delgadino Daiana, Rey Andrea, Frery Alejandro C
Instituto del Desarrollo Humano, Universidad Nacional de General Sarmiento, Los Polvorines B1613, Provincia de Buenos Aires, Argentina.
Instituto de Ciencias, Universidad Nacional de General Sarmiento, Los Polvorines B1613, Provincia de Buenos Aires, Argentina.
Entropy (Basel). 2022 Apr 5;24(4):509. doi: 10.3390/e24040509.
Remotely sensed data are essential for understanding environmental dynamics, for their forecasting, and for early detection of disasters. Microwave remote sensing sensors complement the information provided by observations in the optical spectrum, with the advantage of being less sensitive to adverse atmospherical conditions and of carrying their own source of illumination. On the one hand, new generations and constellations of Synthetic Aperture Radar (SAR) sensors provide images with high spatial and temporal resolution and excellent coverage. On the other hand, SAR images suffer from speckle noise and need specific models and information extraction techniques. In this sense, the G0 family of distributions is a suitable model for SAR intensity data because it describes well areas with different degrees of texture. Information theory has gained a place in signal and image processing for parameter estimation and feature extraction. Entropy stands out as one of the most expressive features in this realm. We evaluate the performance of several parametric and non-parametric Shannon entropy estimators as input for supervised and unsupervised classification algorithms. We also propose a methodology for fine-tuning non-parametric entropy estimators. Finally, we apply these techniques to actual data.
遥感数据对于理解环境动态、进行环境预测以及灾害早期检测至关重要。微波遥感传感器补充了光学光谱观测所提供的信息,其优点是对不利大气条件不太敏感且自带照明源。一方面,新一代合成孔径雷达(SAR)传感器及星座提供具有高空间和时间分辨率以及出色覆盖范围的图像。另一方面,SAR图像存在斑点噪声,需要特定的模型和信息提取技术。从这个意义上讲,G0分布族是SAR强度数据的合适模型,因为它能很好地描述具有不同纹理程度的区域。信息论在信号和图像处理中已在参数估计和特征提取方面占据一席之地。熵在该领域是最具表现力的特征之一。我们评估几种参数化和非参数化香农熵估计器作为监督和无监督分类算法输入的性能。我们还提出一种微调非参数熵估计器的方法。最后,我们将这些技术应用于实际数据。