PerceptNet: Learning Perceptual Similarity of Haptic Textures in Presence of Unorderable Triplets

Priyadarshini Kumari, S. Chaudhuri, S. Chaudhuri
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引用次数: 11

Abstract

In order to design haptic icons or build a haptic vocabulary, we require a set of easily distinguishable haptic signals to avoid perceptual ambiguity, which in turn requires a way to accurately estimate the perceptual (dis)similarity of such signals. In this work, we present a novel method to learn such a perceptual metric based on data from human studies. Our method is based on a deep neural network that projects signals to an embedding space where the natural Euclidean distance accurately models the degree of dissimilarity between two signals. The network is trained only on non-numerical comparisons of triplets of signals, using a novel triplet loss that considers both types of triplets that are easy to order (inequality constraints), as well as those that are unorderable/ambiguous (equality constraints). Unlike prior MDS-based non-parametric approaches, our method can be trained on a partial set of comparisons and can embed new haptic signals without retraining the model from scratch. Extensive experimental evaluations show that our method is significantly more effective at modeling perceptual dissimilarity than alternatives.
PerceptNet:在无序三联体中学习触觉纹理的感知相似性
为了设计触觉图标或建立触觉词汇表,我们需要一组易于区分的触觉信号来避免感知模糊,这反过来又需要一种准确估计这些信号的感知(非)相似性的方法。在这项工作中,我们提出了一种基于人类研究数据来学习这种感知度量的新方法。我们的方法基于深度神经网络,该网络将信号投射到嵌入空间,其中自然欧几里得距离准确地模拟了两个信号之间的不相似度。该网络仅在信号的三元组的非数值比较上进行训练,使用一种新的三元组损失,该损失考虑了易于排序的三元组(不等式约束)以及无序/模糊的三元组(相等约束)。与先前基于mds的非参数方法不同,我们的方法可以在部分比较集上进行训练,并且可以嵌入新的触觉信号,而无需从头开始重新训练模型。广泛的实验评估表明,我们的方法在建模感知不相似性方面明显比其他方法更有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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