Federated Deep Learning frameworks can be used strategically to monitor Land Use locally and infer environmental impacts globally. Distributed data from across the world would be needed to build a global model for Land Use classification. The need for a Federated approach in this application domain would be to avoid transfer of data from distributed locations and save network bandwidth to reduce communication cost. We use a Federated UNet model for Semantic Segmentation of satellite and street view images. The novelty of the proposed architecture is the integration of Knowledge Distillation to reduce communication cost and response time. The accuracy obtained was above 95% and we also brought in a significant model compression to over 17 times and 62 times for street View and satellite images respectively. Our proposed framework has the potential to be a game-changer in real-time tracking of climate change across the planet.
翻译:联邦深层学习框架可用于战略性地监测当地土地利用情况,并从中推导出全球环境影响; 需要从世界各地分发数据,以建立全球土地利用分类模式; 需要在这一应用领域采用联邦办法,以避免从分布地点转移数据,并节省网络带宽,以降低通信成本; 我们使用联邦UNet模型对卫星和街景图像进行静语分解; 拟议架构的新颖之处是整合知识蒸馏,以减少通信成本和反应时间; 获得的准确率超过95%,我们还为街道视图和卫星图像分别带来了超过17次和62次的重大模型压缩; 我们提议的框架有可能成为实时跟踪地球气候变化的游戏变换者。