人工智能创新应用特刊(IAAI 2023)简介

IF 2.5 4区 计算机科学 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Ai Magazine Pub Date : 2023-10-06 DOI:10.1002/aaai.12132
Karen Zita Haigh, Alexander Wong, YuHao Chen
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Designers no longer need to manually search for similar wheel images and can instead focus on other important aspects of the design process and bring new products to market faster.</p><p>Chao Zheng, Xu Cao, and their colleagues at Tencent and New York University (NYU) looked at the challenge of high-definition (HD) maps for autonomous vehicle navigation. Their <i>Tencent HD Map AI (THMA)</i> system helps analysts process centimeter-resolution laser image datasets and label images. The active learning approach serves over 1000 labeling workers and generates more than 30,000 km of HD map data per day. 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引用次数: 0

摘要

本期《人工智能杂志》特刊介绍了 2023 年在华盛顿特区举行的 IAAI 会议上的部分应用。人工智能创新应用(IAAI)大会的目标是突出人工智能技术的创新系统和应用领域,并指出在向最终用户部署复杂技术时经常被忽视的困难。我们中那些已经走出纯粹研究领域并尝试构建供人类使用的应用程序的人意识到,要让应用程序在现实世界中生存下来,需要的不仅仅是出色的算法。正是本着这种精神,我们为您带来了这期特刊,介绍 2023 年 2 月在华盛顿特区举行的 IAAI 会议上的部分应用。这些文章涉及广泛的挑战性问题,为人工智能研究人员和应用开发人员提供了借鉴。IAAI 的接受标准与大多数学术会议不同,最终用户应用必须放在首位。为 AAAI 或 IJCAI 年度会议撰写的论文不太可能被 IAAI 接收,因为这些论文侧重于算法的创新。IAAI 关注的是如何将算法提供给最终用户。如果一篇论文只描述了学习模型的一个小改动,就能比相关工作提高 1%的准确率,这样的论文不适合在 IAAI 上发表。与此同时,IAAI 会对类似的论文非常感兴趣,这些论文指出,当前的模型无法部署(例如,由于规模或训练数据的原因),但对模型稍作改动就能使其准确率降低 1%,从而使其可以部署。本期文章涉及人道主义需求、制造业和预测等领域。一个共同的主题是,所有部署的应用程序都直接与最终用户合作,设计出满足最终用户需求的系统。许多论文的共同作者都来自最终用户社区,这大大加强了论文的实力。第一篇文章由来自 IBM 的 Rahul Nair 与来自丹麦难民委员会的 Bo Madsen 和 Alexander Kjærum 合著,介绍了一个预测难民流离失所动态的系统。该系统名为 "前瞻"(Foresight),可支持针对人道主义响应规划的长期预测。这个可解释的系统提供了支持预测的证据和背景,并允许分析人员探索 "如果 "情景。该系统投入使用所面临的挑战包括以人为本的设计、用户群体的接受程度和技术成熟度,尤其是缺乏高质量的数据。Foresight 现在覆盖了 25 个国家和全球 89% 的流离失所人口。Shresth Verma 及其来自谷歌、哈佛大学、普渡大学和印度理工学院的同事与非政府组织 ARMMAN 合作,为产妇保健提供支持。医护人员与母亲接触,提高她们对医疗保健服务的参与度;与受益人数相比,这些医护人员的可用性有限。SAHELI 帮助确定服务呼叫的最佳接受者,防止了参与率下降 30.5%,并有望在 2023 年底为 100 万受益人提供服务。这一规模和影响是通过在模型及其开发、真实世界数据准备、部署实践以及对负责任的人工智能实践的审慎考虑等方面的多重创新而实现的。来自阿里巴巴的朱朝阳和同事部署了一套系统,用于预测电力负荷,并能应对高温或飓风等极端天气状况。eForecaster 包含一套可解释的算法,用于多样化的能源预测,通过可解释的指导,误差改善了 40%,减少了人工操作,提高了用户接受度。文章介绍了已在中国七个省份部署的四个应用程序。来自韩国现代资本公司和韩国高等技术研究院(KAIST)的金美惠(Mihye Kim)及其同事开发了一套系统,用于预测汽车在一段时间内的剩余价值。这些信息用于确定信贷额度和租赁费率,以减少收入损失、减少贷款违约情况并防止欺诈。该系统还能帮助买家避开信誉不佳的汽车经销商:韩国政府会在二手车网站上共享这些价格估算。论文介绍了现实世界的操作要求,如遵守法规,以及对未见输入(如新车型和稀有车型)的通用性。 来自韩国庆熙大学和现代汽车公司的 Kyung Pyo Kang 及其同事研究了新颖的制造设计:从最终用户的喜好以及竞争和版权侵权的角度来看,产品必须具有创新性。如果在生产过程的后期发现设计侵权,可能会造成超过 300 万美元的损失。现代汽车公司正在使用他们的系统对车轮设计进行相似性验证,并将验证时间缩短了 90%,最长不超过 10 分钟。设计师不再需要手动搜索相似的车轮图像,而可以专注于设计流程的其他重要方面,更快地将新产品推向市场。他们的腾讯高清地图人工智能(THMA)系统帮助分析师处理厘米级分辨率的激光图像数据集,并对图像进行标注。这种主动学习方法为 1000 多名标注工人提供服务,每天生成的高清地图数据超过 3 万公里。由于90%以上的高清地图数据是由THMA自动标注的,该系统将传统的高清地图标注流程加快了10倍以上,大大减轻了人工标注的负担,为更高效的高清地图制作铺平了道路。目前的计算机视觉方法无法满足工业应用所需的严格公差要求,因此需要大量的人工干预来验证和纠正每个检测到的边缘。与此同时,滑铁卢大学、DarwinAI 和穆格公司的 Hayden Gunraj 及其同事利用计算机视觉技术对焊点进行质量检测。焊点缺陷会影响各种印刷电路板组件。目前的人工检测过程既耗时又容易出错。SolderNet 是一种可解释的计算机视觉算法,可实现高吞吐量、高性能和零疲劳检测。SolderNet 已用于超过 2,600 万次检查,总体漏检率低于 0.01%。我们鼓励读者阅读 IAAI 2023 的论文集,并向未来的 IAAI 会议提交他们自己部署的系统的论文。 来自韩国庆熙大学(Kyung Pyo Kang)和现代汽车(Hyundai Motor)的Kyung Pyo Kang及其同事着眼于新颖的制造设计:从终端用户偏好的角度、从竞争和侵犯版权的角度来看,产品必须具有创新性。在制造过程后期发现的设计侵权可能会造成超过300万美元的损失。他们的系统在现代汽车(Hyundai Motor)使用,对车轮设计进行相似性验证,并将验证时间缩短了90%,最多可达10分钟。设计师不再需要手动搜索相似的车轮图像,而是可以专注于设计过程中的其他重要方面,从而更快地将新产品推向市场。郑超、徐Cao和他们在腾讯和纽约大学(NYU)的同事们研究了高清地图在自动驾驶汽车导航中的挑战。他们的腾讯高清地图人工智能(THMA)系统帮助分析人员处理厘米分辨率的激光图像数据集并标记图像。这种主动学习方法为1000多名标注人员提供服务,每天生成30,000多公里的高清地图数据。THMA自动标注了90%以上的高清地图数据,将传统高清地图标注过程加快了十倍以上,大大减少了人工标注的负担,为更高效的高清地图制作铺平了道路。来自德国Endress+Hauser和挪威科技大学的Rabia Ali及其同事开发了一种检测两种金属之间焊缝的方法。目前的计算机视觉方法无法满足工业应用所需的严格公差,导致需要大量的人工干预来验证和纠正每个检测到的边缘。结合消除异常工件的预滤波方法,他们的系统可以直接部署在激光焊接机上,从而节省了大量的生产时间和成本。类似地,滑铁卢大学的Hayden Gunraj和他的同事,达尔文人工智能和穆格使用计算机视觉对焊点进行质量检查。焊点缺陷影响着各种印刷电路板元件。当前的人工检测过程耗时且容易出错。SolderNet是一种可解释的计算机视觉算法,可实现高通量,高性能和零疲劳检测。SolderNet已被用于超过2600万次检查,总体漏网率低于0.01%。本文仅包含IAAI 2023上展示的一些有趣的文章。我们鼓励读者查看IAAI 2023的会议记录,并在未来的IAAI会议上提交他们自己部署的系统的论文。作者宣称没有冲突。Karen Z. Haigh是认知射频系统领域的顾问和演讲者,也是《认知电子战:一种人工智能方法》一书的合著者。Alexander Wong是滑铁卢大学教授,加拿大人工智能和医学成像研究主席,达尔文人工智能联合创始人。陈宇浩,滑铁卢大学研究助理教授,专注于视觉和图像处理。
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Introduction to the special issue on Innovative Applications of Artificial Intelligence (IAAI 2023)

This special issue of AI Magazine covers select applications from the IAAI conference held in 2023 in Washington, DC. The articles address a broad range of very challenging issues and contain great lessons for AI researchers and application developers.

The goal of the Innovative Applications of Artificial Intelligence (IAAI) conference is to highlight new, innovative systems and application areas of AI technology and to point out the often-overlooked difficulties involved in deploying complex technology to end users. Those of us who have ventured out of the realm of pure research and tried to build applications to be used by our fellow humans realize that it takes a lot more than just brilliant algorithms to make an application survive in the real world. Each application that succeeds is worth celebrating, and the teams behind them are due wholehearted congratulations.

It is in this spirit that we bring you this special issue covering select applications from the IAAI conference held in February 2023 in Washington, DC. The articles address a broad range of challenging issues and contain lessons for fellow AI researchers and application developers.

IAAI acceptance criteria are different from most academic conferences in that the end-user application must come first and foremost. A paper written for the annual AAAI or IJCAI conferences is unlikely to be accepted for IAAI because these papers focus on the innovation in the algorithm. IAAI focuses on how to get algorithms to the end user. A paper that describes a small change in a learning model to achieve 1% improvement in accuracy over related work is not appropriate for IAAI. Meanwhile, IAAI would be very interested in a similar paper saying that the current model is not deployable (e.g., due to size or training data), but a small change in the model that loses 1% accuracy allows it to be deployable.

The articles in this issue cover humanitarian needs, manufacturing, and forecasting. A common theme is that all deployed applications work directly with end users to design a system that meets end-user needs. Many of the papers have co-authors from the end user community, which strengthens the paper significantly. The papers focus on end-user concerns, both in terms of solving the true end-user problem and in terms of generating explainable results.

The first article by Rahul Nair from IBM with Bo Madsen and Alexander Kjærum from the Danish Refugee Council presents a system that forecasts the dynamics of refugee displacements. The system, Foresight, supports long-term forecasts aimed at humanitarian response planning. The explainable system provides evidence and context supporting the forecast and allows analysts to explore “what if” scenarios. Challenges to fielding this system include human-centered design, acceptance in the user community, and technical maturity, notably the lack of high-quality data. Foresight now covers 25 countries and 89% of all displaced populations globally.

Shresth Verma and colleagues from Google, Harvard, Purdue, and the Indian Institute of Technology worked with ARMMAN, a nongovernmental organization to support maternal health care. Health care workers reach out to mothers to boost engagement with the health care services; these workers have limited availability compared to the number of beneficiaries. SAHELI helps identify the best recipients for service calls, prevented a drop in engagements by 30.5%, and is on track to serve one million beneficiaries by the end of 2023. This scale and impact have been achieved through multiple innovations in the model and its development, in preparation of real-world data, in deployment practices, and through careful consideration of responsible AI practices.

ZhaoYang Zhu and colleagues from Alibaba deployed a system to forecast electricity load and can handle extreme weather conditions such as high temperatures or hurricanes. Accurate forecasting leads to more reliable and safe planning for the power grid. eForecaster contains a suite of explainable algorithms for diversified energy forecasting, leading to a 40% improvement in error, reduced manual work, and increased user acceptance through explainable guidance. The article describes four applications that have been deployed in seven provinces in China.

Mihye Kim and her colleagues from Hyundai Capital and the Korean Advanced Institute of Technology (KAIST) in South Korea developed a system to predict the residual value of a vehicle over time. This information is used to determine credit lines and leasing rates to reduce revenue loss, reduce cases of loan default, and prevent fraud. The system also helps buyers avoid disreputable car dealers: these price estimates are shared on a used car website by the South Korean government. The paper describes real-world operational requirements such as compliance with regulations, and generalization to unseen input, for example, new and rare car models.

Kyung Pyo Kang and colleagues from Kyung Hee University and Hyundai Motor in South Korea look at novel manufacturing design: products must be innovative, from the perspective of end-user preferences and from the perspective of competition and copyright infringement. A design infringement that is detected late in the manufacturing process might cost over $3 million US dollars. Their system, in use at Hyundai Motor, performs similarity verification of wheel designs and shortened the verification time by 90% to a maximum of 10 min. Designers no longer need to manually search for similar wheel images and can instead focus on other important aspects of the design process and bring new products to market faster.

Chao Zheng, Xu Cao, and their colleagues at Tencent and New York University (NYU) looked at the challenge of high-definition (HD) maps for autonomous vehicle navigation. Their Tencent HD Map AI (THMA) system helps analysts process centimeter-resolution laser image datasets and label images. The active learning approach serves over 1000 labeling workers and generates more than 30,000 km of HD map data per day. With over 90% of HD map data labeled automatically by THMA, the system accelerates traditional HD map labeling processes by more than tenfold, significantly reducing manual annotation burdens and paving the way for more efficient HD map production.

Rabia Ali and colleagues from Endress+Hauser in Germany and the Norwegian University of Science and Technology developed an approach to detect the weld seam between two metals. Current computer vision approaches are unable to meet the stringent tolerances required for industrial use, leading to significant human intervention to verify and correct every detected edge. Combined with a prefiltering approach that eliminates anomalous workpieces, their system can be deployed directly on laser welding machines, thus saving significant production time and cost.

In a similar vein, Hayden Gunraj and his colleagues at the University of Waterloo, DarwinAI, and Moog use computer vision for quality inspection of solder joints. Solder joint defects affect a variety of printed circuit board components. The current manual inspection process is time-consuming and error-prone. SolderNet is an explainable computer vision algorithm that leads to high-throughput, high-performance, and zero-fatigue inspection. SolderNet has been used for over 26 million inspections with an overall escape rate below 0.01%.

This selection of articles contains only a few of the interesting articles presented at IAAI 2023. We encourage our readers to look at the proceedings of IAAI 2023 and to submit papers of their own deployed systems to future IAAI conferences.

The authors declare that there is no conflict.

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来源期刊
Ai Magazine
Ai Magazine 工程技术-计算机:人工智能
CiteScore
3.90
自引率
11.10%
发文量
61
审稿时长
>12 weeks
期刊介绍: AI Magazine publishes original articles that are reasonably self-contained and aimed at a broad spectrum of the AI community. Technical content should be kept to a minimum. In general, the magazine does not publish articles that have been published elsewhere in whole or in part. The magazine welcomes the contribution of articles on the theory and practice of AI as well as general survey articles, tutorial articles on timely topics, conference or symposia or workshop reports, and timely columns on topics of interest to AI scientists.
期刊最新文献
Issue Information AI fairness in practice: Paradigm, challenges, and prospects Toward the confident deployment of real-world reinforcement learning agents Towards robust visual understanding: A paradigm shift in computer vision from recognition to reasoning Efficient and robust sequential decision making algorithms
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