3,706 research outputs found

    Privaatsust sÀilitava raalnÀgemise meetodi arendamine kehalise aktiivsuse automaatseks jÀlgimiseks koolis

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    VĂ€itekirja elektrooniline versioon ei sisalda publikatsiooneKuidas vaadelda inimesi ilma neid nĂ€gemata? Öeldakse, et ei ole viisakas jĂ”llitada. Õigus privaatsusele on lausa inimĂ”igus. Siiski on inimkĂ€itumises palju sellist, mida teadlased tahaksid uurida inimesi vaadeldes. NĂ€iteks tahame teada, kas lapsed hakkavad vahetunnis rohkem liikuma, kui koolis keelatakse nutitelefonid? Selle vĂ€lja selgitamiseks peaks teadlane kĂŒsima lapsevanematelt nĂ”usolekut vĂ”sukeste vaatlemiseks. Eeldusel, et lapsevanemad annavad loa, oleks klassikaliseks vaatluseks vaja tohutult palju tööjĂ”udu – mitu vaatlejat koolimajas iga pĂ€ev piisavalt pikal perioodil enne ja pĂ€rast nutitelefoni keelu kehtestamist. Doktoritööga pĂŒĂŒdsin lahendada korraga privaatsuse probleemi ja tööjĂ”u probleemi, asendades inimvaatleja tehisaruga. Kaasaegsed masinĂ”ppe meetodid vĂ”imaldavad luua mudeleid, mis tuvastavad automaatselt pildil vĂ”i videos kujutatud objekte ja nende omadusi. Kui tahame tehisaru, mis tunneb pildil Ă€ra inimese, tuleb moodustada masinĂ”ppe andmestik, kus on pilte inimestest ja pilte ilma inimesteta. Kui tahame tehisaru, mis eristaks videos madalat ja kĂ”rget kehalist aktiivsust, on vaja vastavat videoandmestikku. Doktoritöös kogusingi andmestiku, kus video laste liikumisest on sĂŒnkroniseeritud puusal kantavate aktseleromeetritega, et treenida mudel, mis eristaks videopikslites madalamat ja kĂ”rgemat liikumise intensiivsust. Koostöös Tehonoloogiainstituudi iCV laboriga arendasime vĂ€lja videoanalĂŒĂŒsi sensori prototĂŒĂŒbi, mis suudab reaalaja kiirusel hinnata kaamera vaatevĂ€ljas olevate inimeste kehalise aktiivsuse taset. Just see, et tehisaru suudab tuletada videost kehalise aktiivsuse informatsiooni ilma neid videokaadreid salvestamata ega inimestele ĂŒldsegi nĂ€itamata, vĂ”imaldab vaadelda inimesi ilma neid nĂ€gemata. VĂ€ljatöötatud meetod on mĂ”eldud kehalise aktiivsuse mÔÔtmiseks koolipĂ”histes teadusuuringutes ning seetĂ”ttu on arenduses rĂ”hutatud privaatsuse kaitsmist ja teaduseetikat. Laiemalt vaadates illustreerib doktoritöö aga raalnĂ€gemistehnoloogiate potentsiaali töötlemaks visuaalset infot linnaruumis ja töökohtadel ning mitte ainult kehalise aktiivsuse mÔÔtmiseks kĂ”rgete teaduseetika kriteerimitega. Siin ongi koht avalikuks aruteluks – millistel tingimustel vĂ”i kas ĂŒldse on OK, kui sind jĂ”llitab robot?  How to observe people without seeing them? They say it's not polite to stare. The right to privacy is considered a human right. However, there is much in human behavior that scientists would like to study via observation. For example, we want to know whether children will start moving more during recess if smartphones are banned at school? To figure this out, scientists would have to ask parental consent to carry out the observation. Assuming parents grant permission, a huge amount of labour would be needed for classical observation - several observers in the schoolhouse every day for a sufficiently long period before and after the smartphone ban. With my doctoral thesis, I tried to solve both the problem of privacy and of labor by replacing the human observer with artificial intelligence (AI). Modern machine learning methods allow training models that automatically detect objects and their properties in images or video. If we want an AI that recognizes people in images, we need to form a machine learning dataset with pictures of people and pictures without people. If we want an AI that differentiates between low and high physical activity in video, we need a corresponding video dataset. In my doctoral thesis, I collected a dataset where video of children's movement is synchronized with hip-worn accelerometers to train a model that could differentiate between lower and higher levels of physical activity in video. In collaboration with the ICV lab at the Institute of Technology, we developed a prototype video analysis sensor that can estimate the level of physical activity of people in the camera's field of view at real-time speed. The fact that AI can derive information about physical activity from the video without recording the footage or showing it to anyone at all, makes it possible to observe without seeing. The method is designed for measuring physical activity in school-based research and therefore highly prioritizes privacy protection and research ethics. But more broadly, the thesis illustrates the potential of computer vision technologies for processing visual information in urban spaces and workplaces, and not only for measuring physical activity or adhering to high ethical standards. This warrants wider public discussion – under what conditions or whether at all is it OK to have a robot staring at you?https://www.ester.ee/record=b555972

    Training of Crisis Mappers and Map Production from Multi-sensor Data: Vernazza Case Study (Cinque Terre National Park, Italy)

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    This aim of paper is to presents the development of a multidisciplinary project carried out by the cooperation between Politecnico di Torino and ITHACA (Information Technology for Humanitarian Assistance, Cooperation and Action). The goal of the project was the training in geospatial data acquiring and processing for students attending Architecture and Engineering Courses, in order to start up a team of "volunteer mappers". Indeed, the project is aimed to document the environmental and built heritage subject to disaster; the purpose is to improve the capabilities of the actors involved in the activities connected in geospatial data collection, integration and sharing. The proposed area for testing the training activities is the Cinque Terre National Park, registered in the World Heritage List since 1997. The area was affected by flood on the 25th of October 2011. According to other international experiences, the group is expected to be active after emergencies in order to upgrade maps, using data acquired by typical geomatic methods and techniques such as terrestrial and aerial Lidar, close-range and aerial photogrammetry, topographic and GNSS instruments etc.; or by non conventional systems and instruments such us UAV, mobile mapping etc. The ultimate goal is to implement a WebGIS platform to share all the data collected with local authorities and the Civil Protectio
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