面临不确定的

si-chan park
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引用次数: 1

摘要

不确定的面对是一个数据驱动的交互式视听装置,旨在通过机器学习技术来估计数据点在3D空间中的位置,从而表示数据点的不确定性。它还试图引起人们对机器学习意外使用合成/假数据的可能性的担忧。不确定人脸通过t-SNE(一种非线性降维技术)在三维空间中可视化假人脸的实时聚类,并对人脸进行人脸嵌入。这种聚类基于对数据点的概率分布的假设,揭示了哪些面孔彼此相似。然而,与t-SNE用于机器学习中客观数据探索的原始目的不同,它将数据点表示为元球,其中两个或多个人脸图像在足够接近时成为合并的人脸,以反映t-SNE算法产生的数据位置的不确定性和概率性。因此,元球呈现被用作数据的抽象、概率表示的手段,而不是我们期望使用科学可视化的准确性。随着t-SNE和基于metaball的可视化,基于颗粒声音合成技术的uncertainty Facing在三维空间中对整体数据分布的变化进行了声音化处理。不确定面也反映了误差值,t-SNE在每次迭代中测量原始高维分布与推导出的低维分布之间的误差值,以表示数据的不确定性,如抖动运动和不谐音。作为一个互动装置,“不确定的面孔”让观众看到他们的脸和假脸之间的关系,这意味着机器学习可能会以意想不到的方式被滥用,因为人脸识别技术无法区分真实和虚假的脸。
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Uncertain facing
Uncertain Facing is a data-driven, interactive audiovisual installation that aims to represent the uncertainty of data points of which their positions in 3D space are estimated by machine learning techniques. It also tries to raise concerns about the possibility of the unintended use of machine learning with synthetic/fake data. Uncertain Facing visualizes the realtime clustering of fake faces in 3D space through t-SNE, a non-linear dimensionality reduction technique, with face embeddings of the faces. This clustering reveals what faces are similar to each other based on the assumption of a probability distribution over data points. However, unlike the original purpose of t-SNE that is meant to be used in an objective data exploration in machine learning, it represents data points as metaballs, in which two or more face images become a merged face when they are close enough, to reflect the uncertain and probabilistic nature of data locations the t-SNE algorithm yields. As a result, metaball rendering is used as a means of an abstract, probabilistic representation of data as opposed to exactness that we expect from the use of scientific visualizations. Along with the t-SNE and metaball-based visualization, Uncertain Facing sonifies the change of the overall data distribution in 3D space based on a granular sound synthesis technique. Uncertain Facing also reflects error values, which t-SNE measures at each iteration between a distribution in original high dimensions and a deduced low-dimensional distribution, to represent the uncertainty of data as jittery motion and inharmonic sound. As an interactive installation, Uncertain Facing allows the audience to see the relationship between their face and the fake faces, implying an aspect that machine learning could be misused in an unintended way as face recognition technology does not distinguish between real and fake faces.
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