Human-Centered AI Lab, Institute of Forest Engineering, Department of Forest and Soil Sciences, University of Natural Resources and Life Sciences Vienna, 1190 Wien, Austria.
xAI Lab, Alberta Machine Intelligence Institute, University of Alberta, Edmonton, AB T5J 3B1, Canada.
Sensors (Basel). 2022 Apr 15;22(8):3043. doi: 10.3390/s22083043.
The main impetus for the global efforts toward the current digital transformation in almost all areas of our daily lives is due to the great successes of artificial intelligence (AI), and in particular, the workhorse of AI, statistical machine learning (ML). The intelligent analysis, modeling, and management of agricultural and forest ecosystems, and of the use and protection of soils, already play important roles in securing our planet for future generations and will become irreplaceable in the future. Technical solutions must encompass the entire agricultural and forestry value chain. The process of digital transformation is supported by cyber-physical systems enabled by advances in ML, the availability of big data and increasing computing power. For certain tasks, algorithms today achieve performances that exceed human levels. The challenge is to use multimodal information fusion, i.e., to integrate data from different sources (sensor data, images, *omics), and explain to an expert why a certain result was achieved. However, ML models often react to even small changes, and disturbances can have dramatic effects on their results. Therefore, the use of AI in areas that matter to human life (agriculture, forestry, climate, health, etc.) has led to an increased need for trustworthy AI with two main components: explainability and robustness. One step toward making AI more robust is to leverage expert knowledge. For example, a farmer/forester in the loop can often bring in experience and conceptual understanding to the AI pipeline-no AI can do this. Consequently, human-centered AI (HCAI) is a combination of "artificial intelligence" and "natural intelligence" to empower, amplify, and augment human performance, rather than replace people. To achieve practical success of HCAI in agriculture and forestry, this article identifies three important frontier research areas: (1) intelligent information fusion; (2) robotics and embodied intelligence; and (3) augmentation, explanation, and verification for trusted decision support. This goal will also require an agile, human-centered design approach for three generations (G). G1: Enabling easily realizable applications through immediate deployment of existing technology. G2: Medium-term modification of existing technology. G3: Advanced adaptation and evolution beyond state-of-the-art.
当前,人工智能(AI)的巨大成功,尤其是 AI 的主要工具——统计机器学习(ML),推动了我们日常生活几乎所有领域的全球数字化转型努力。对农业和森林生态系统的智能分析、建模和管理,以及对土壤的利用和保护,已经在为子孙后代保护我们的星球方面发挥了重要作用,并且在未来将变得不可或缺。技术解决方案必须涵盖整个农业和林业价值链。数字转型过程得到了 ML 推动的信息物理系统、大数据的可用性和计算能力的提高的支持。对于某些任务,今天的算法已经达到了超越人类水平的性能。挑战在于使用多模态信息融合,即整合来自不同来源的数据(传感器数据、图像、组学),并向专家解释为什么会得到特定的结果。然而,ML 模型往往对微小的变化做出反应,干扰会对其结果产生巨大影响。因此,在对人类生活(农业、林业、气候、健康等)重要的领域中使用 AI,导致对具有两个主要组成部分的可信 AI 的需求增加:可解释性和稳健性。使 AI 更稳健的一个步骤是利用专家知识。例如,在 AI 管道中引入农民/林务员通常可以带来经验和概念理解——没有 AI 可以做到这一点。因此,以人为中心的 AI(HCAI)是“人工智能”和“自然智能”的结合,旨在增强、放大和增强人类的表现,而不是取代人类。为了在农业和林业中实现 HCAI 的实际成功,本文确定了三个重要的前沿研究领域:(1)智能信息融合;(2)机器人技术和具身智能;(3)用于可信决策支持的增强、解释和验证。这一目标还将需要一种敏捷的、以人为中心的设计方法,用于三个世代(G)。G1:通过现有技术的即时部署实现易于实现的应用。G2:对现有技术进行中期修改。G3:超越现有技术的高级适应和进化。