论文标题
部分可观测时空混沌系统的无模型预测
Detecting Environmental Violations with Satellite Imagery in Near Real Time: Land Application under the Clean Water Act
论文作者
论文摘要
本文为将计算机视觉用于环境可持续性提供了一种新的,高度的结果设置。浓缩动物喂养行动(CAFO)(又称强化牲畜农场或“工厂农场”)产生巨大的肥料和污染。在冬季,倾倒粪便构成了重大的环境风险,并在许多州违反了环境法。然而,联邦环境保护署(EPA)和州机构主要依靠自我报告来监视此类“土地应用”。我们的论文做出了四个贡献。首先,我们介绍了CAFO和土地应用的环境,政策和农业环境。其次,我们提供了一个新的高效率数据集(每天至每周)3M/像素卫星图像,从2018 - 20年使用威斯康星州的330个CAFO,并带有手工标记的土地应用实例(n = 57,697)。第三,我们开发了一个对象检测模型,以预测土地应用和一个系统以近乎实时的推论。我们表明,该系统似乎有效地检测了土地应用(PR AUC = 0.93),并且我们发现了几个异常设施,这些设施似乎定期适用。最后,我们估计2021/22冬季土地应用事件的人口流行率。我们表明,土地应用的普遍性要比设施自我报告的要高得多。该系统可以由环境监管机构和利益集团使用,该系统是在过去冬天根据该系统进行的一次试点探视。总体而言,我们的应用程序展示了基于AI的计算机视觉系统解决环境符合近日图像的主要问题的潜力。
This paper introduces a new, highly consequential setting for the use of computer vision for environmental sustainability. Concentrated Animal Feeding Operations (CAFOs) (aka intensive livestock farms or "factory farms") produce significant manure and pollution. Dumping manure in the winter months poses significant environmental risks and violates environmental law in many states. Yet the federal Environmental Protection Agency (EPA) and state agencies have relied primarily on self-reporting to monitor such instances of "land application." Our paper makes four contributions. First, we introduce the environmental, policy, and agricultural setting of CAFOs and land application. Second, we provide a new dataset of high-cadence (daily to weekly) 3m/pixel satellite imagery from 2018-20 for 330 CAFOs in Wisconsin with hand labeled instances of land application (n=57,697). Third, we develop an object detection model to predict land application and a system to perform inference in near real-time. We show that this system effectively appears to detect land application (PR AUC = 0.93) and we uncover several outlier facilities which appear to apply regularly and excessively. Last, we estimate the population prevalence of land application events in Winter 2021/22. We show that the prevalence of land application is much higher than what is self-reported by facilities. The system can be used by environmental regulators and interest groups, one of which piloted field visits based on this system this past winter. Overall, our application demonstrates the potential for AI-based computer vision systems to solve major problems in environmental compliance with near-daily imagery.