Forest plays a vital role in reducing greenhouse gas emissions and mitigating climate change besides maintaining the world's biodiversity. The existing satellite-based forest monitoring system utilizes supervised learning approaches that are limited to a particular region and depend on manually annotated data to identify forest. This work envisages forest identification as a few-shot semantic segmentation task to achieve generalization across different geographical regions. The proposed few-shot segmentation approach incorporates a texture attention module in the prototypical network to highlight the texture features of the forest. Indeed, the forest exhibits a characteristic texture different from other classes, such as road, water, etc. In this work, the proposed approach is trained for identifying tropical forests of South Asia and adapted to determine the temperate forest of Central Europe with the help of a few (one image for 1-shot) manually annotated support images of the temperate forest. An IoU of 0.62 for forest class (1-way 1-shot) was obtained using the proposed method, which is significantly higher (0.46 for PANet) than the existing few-shot semantic segmentation approach. This result demonstrates that the proposed approach can generalize across geographical regions for forest identification, creating an opportunity to develop a global forest cover identification tool.
翻译:除了维持世界生物多样性外,现有的卫星森林监测系统在减少温室气体排放和减缓气候变化方面发挥着至关重要的作用。现有的森林监测系统使用限于特定区域的有监督的学习方法,并依靠人工附加说明的数据来识别森林。这项工作设想将森林确定作为在不同地理区域实现普遍化的微小语义分解任务。拟议的微光分解方法在原型网络中包含一个纹理关注模块,以突出森林的纹理特征。事实上,森林展示了不同于其他类别(如道路、水等)的特质。在这项工作中,拟议的方法经过培训,以识别南亚热带森林,并适应于确定中欧的温带森林。在少数(一幅图象为1幅图象)的帮助下,对温带森林进行了手动附加说明性支持图像。使用拟议的方法获得了0.62个森林类(一图象为1图象)的IoU,该方法比现有的少数图象的断层分解方法高出许多(PANet为0.46)。这一方法,其特点是,拟议的方法能够将一个全球森林覆盖层识别机会加以概括。