{"title":"CAPABLE: Engineering, textile, and fashion Collaboration, for citizens' Awareness and Privacy Protection","authors":"Rachele Didero, Giovanni Maria Conti","doi":"10.54941/ahfe1001536","DOIUrl":null,"url":null,"abstract":"Many private companies and public bodies in authoritarian and democratic states have joined facial recognition technology, used for various purposes. This situation is due to the general absence of a specific regulation that monitors its use. There is no consensus in society regarding the ethics of this technology. Furthermore, there are many doubts concerning the long-term ethical sustainability of facial recognition and its compliance with the law. A problem that emerges from the use of this technology is its obscurity. We do not know who is responsible for the decision automatically made; we do not know how the data is used by those who collect it, how long this data is kept, who can have access to it, to whom it is sent, and how this is used to create a profile. In addition, facial recognition systems are powered by numerous images collected from the Internet and social media without users' permission: it is, therefore, impossible to trace the origin of the data. Consequently, any citizen could be classified, most likely discriminated against, and become the victim of an algorithm. The boundary between security and control is decidedly blurred: many cameras do not respect the privacy of individuals and often harm human rights when they are used to discriminate, accuse, power, and manipulate people. From this discussion on privacy and human rights, it was born first the desire to create awareness, in particular regarding these technologies and the possible issues linked to them. Secondly, it was born the will to create a product that would be the spokesperson for these concerns and allow citizens to protect themselves. On this basis, a collaboration between fashion, engineering, and textile has developed to produce fabric and then garments, which confuse facial recognition systems in real-time. The technological innovation aims to create a system capable of generating adversarial knitted patches that can confuse the systems that capture biometric data. By integrating an adversarial algorithm into their jacquard motifs, the garments prevent the wearers from being identified, preserving their privacy. The adversarial textile is made with computerized knitting machines. Compared to a printed image, knitwear acquires texture, durability, wearability, and practicability. Furthermore, a knitted fabric allows modifying the single yarn material based on the results and performance we want to obtain. These fabrics have been tested on Yolo, the fastest and most advanced algorithm for real-time object recognition. The project was born in New York in 2019; the first experiments with computerized knitting machines were carried out at the Politecnico di Milano in January 2020. The textile was developed in the workshops of the Shenkar College of Tel Aviv. On February 8, 2021, the patent of the industrial process to produce the adversarial knitted textile was filed, with the patronage of the Politecnico di Milano. Today, the research on this fabric and these thematics has carried on within a Ph.D. that combines human-centric design and engineering.","PeriodicalId":448346,"journal":{"name":"Human Factors for Apparel and Textile Engineering","volume":"71 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1900-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Human Factors for Apparel and Textile Engineering","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.54941/ahfe1001536","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
Many private companies and public bodies in authoritarian and democratic states have joined facial recognition technology, used for various purposes. This situation is due to the general absence of a specific regulation that monitors its use. There is no consensus in society regarding the ethics of this technology. Furthermore, there are many doubts concerning the long-term ethical sustainability of facial recognition and its compliance with the law. A problem that emerges from the use of this technology is its obscurity. We do not know who is responsible for the decision automatically made; we do not know how the data is used by those who collect it, how long this data is kept, who can have access to it, to whom it is sent, and how this is used to create a profile. In addition, facial recognition systems are powered by numerous images collected from the Internet and social media without users' permission: it is, therefore, impossible to trace the origin of the data. Consequently, any citizen could be classified, most likely discriminated against, and become the victim of an algorithm. The boundary between security and control is decidedly blurred: many cameras do not respect the privacy of individuals and often harm human rights when they are used to discriminate, accuse, power, and manipulate people. From this discussion on privacy and human rights, it was born first the desire to create awareness, in particular regarding these technologies and the possible issues linked to them. Secondly, it was born the will to create a product that would be the spokesperson for these concerns and allow citizens to protect themselves. On this basis, a collaboration between fashion, engineering, and textile has developed to produce fabric and then garments, which confuse facial recognition systems in real-time. The technological innovation aims to create a system capable of generating adversarial knitted patches that can confuse the systems that capture biometric data. By integrating an adversarial algorithm into their jacquard motifs, the garments prevent the wearers from being identified, preserving their privacy. The adversarial textile is made with computerized knitting machines. Compared to a printed image, knitwear acquires texture, durability, wearability, and practicability. Furthermore, a knitted fabric allows modifying the single yarn material based on the results and performance we want to obtain. These fabrics have been tested on Yolo, the fastest and most advanced algorithm for real-time object recognition. The project was born in New York in 2019; the first experiments with computerized knitting machines were carried out at the Politecnico di Milano in January 2020. The textile was developed in the workshops of the Shenkar College of Tel Aviv. On February 8, 2021, the patent of the industrial process to produce the adversarial knitted textile was filed, with the patronage of the Politecnico di Milano. Today, the research on this fabric and these thematics has carried on within a Ph.D. that combines human-centric design and engineering.
专制国家和民主国家的许多私营公司和公共机构都加入了用于各种目的的面部识别技术。这种情况是由于普遍缺乏监督其使用的具体规定。关于这项技术的伦理问题,社会上还没有达成共识。此外,人们对面部识别的长期道德可持续性及其是否符合法律存在许多疑问。使用这种技术产生的一个问题是它的模糊性。我们不知道谁对自动做出的决定负责;我们不知道那些收集数据的人是如何使用这些数据的,这些数据保存了多长时间,谁可以访问它,它被发送给谁,以及如何使用这些数据来创建一个配置文件。此外,面部识别系统是由未经用户许可从互联网和社交媒体上收集的大量图像驱动的:因此,无法追踪数据的来源。因此,任何公民都可能被分类,很可能受到歧视,并成为算法的受害者。安全和控制之间的界限显然是模糊的:许多摄像机不尊重个人隐私,当它们被用来歧视、指控、权力和操纵人时,往往会损害人权。从这次关于隐私和人权的讨论中,首先产生了提高意识的愿望,特别是关于这些技术及其相关的可能问题。其次,它产生了创造一种产品的意愿,这种产品将成为这些担忧的代言人,并允许公民保护自己。在此基础上,时尚、工程和纺织品之间的合作已经发展到生产面料,然后是服装,这可以实时迷惑面部识别系统。这项技术创新的目的是创建一个系统,能够生成对抗性的编织补丁,从而迷惑捕获生物特征数据的系统。通过将对抗算法集成到提花图案中,这些衣服可以防止穿着者被识别,保护他们的隐私。对抗性纺织品是由电脑针织机制成的。与印刷图像相比,针织品具有质地,耐用性,可穿戴性和实用性。此外,针织物允许根据我们想要获得的结果和性能修改单纱材料。这些织物已经在Yolo上进行了测试,Yolo是最快、最先进的实时物体识别算法。该项目于2019年在纽约诞生;2020年1月,在米兰理工大学进行了第一次计算机化针织机实验。这种纺织品是在特拉维夫申卡尔学院的车间开发的。2021年2月8日,在米兰理工大学(Politecnico di Milano)的赞助下,生产对抗性针织纺织品的工业过程专利被提交。今天,对这种织物和这些主题的研究已经在博士学位中进行,结合了以人为本的设计和工程。