Augmented-Reality Waste Accumulation Visualizations

Ambre Assor, Arnaud Prouzeau, Pierre Dragicevic, Martin Hachet
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引用次数: 1

Abstract

The negative impact humans have on the environment is partly caused by thoughtless consumption leading to unnecessary waste. A likely contributing factor is the relative invisibility of waste: waste produced by individuals is either out of their sight or quickly taken away. Nevertheless, waste disposal systems sometimes break down, creating natural information displays of waste production that can have educational value. We take inspiration from such natural displays and introduce a class of situated visualizations we call augmented-reality waste accumulation visualizations or ARwavs, which are literal representations of waste data embedded in users’ familiar environment. We implemented examples of ARwavs and demonstrated them in feedback sessions with experts in pro-environmental behavior, and during a large tech exhibition event. We discuss general design considerations for ARwavs. Finally, we conducted a study with 20 participants suggesting that ARwavs yield stronger emotional responses than non-immersive waste accumulation visualizations and plain numbers.
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增强现实垃圾堆积可视化技术
人类对环境的负面影响部分是由于不经意的消费导致了不必要的浪费。其中一个可能的原因是废物的相对隐蔽性:个人产生的废物要么不在他们的视线范围内,要么很快被带走。尽管如此,废物处理系统有时会发生故障,这就形成了废物产生的自然信息展示,具有教育价值。我们从这种自然展示中汲取灵感,推出了一类情景可视化产品,我们称之为增强现实垃圾堆积可视化产品或 ARwavs,它们是嵌入用户熟悉环境中的垃圾数据的文字表述。我们实施了 ARwavs 的示例,并在与环保行为专家的反馈会议上和大型科技展览活动中进行了演示。我们讨论了 ARwavs 的一般设计注意事项。最后,我们对 20 名参与者进行了一项研究,结果表明,与非沉浸式废物累积可视化和普通数字相比,ARwav 能产生更强烈的情感反应。
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