Estimating Perceptual Attributes of Haptic Textures Using Visuo-Tactile Data
Estimating Perceptual Attributes of Haptic Textures Using Visuo-Tactile Data
Accurate prediction of perceptual attributes of haptic textures is essential for advancing VR and AR applications and enhancing robotic interaction with physical surfaces. This paper presents a deep learning-based multi-modal framework, incorporating visual and tactile data, to predict perceptual texture ratings by leveraging multi-feature inputs. To achieve this, a four-dimensional haptic attribute space encompassing rough-smooth, flat-bumpy, sticky-slippery, and hard-soft dimensions is first constructed through psychophysical experiments, where participants evaluate 50 diverse real-world texture samples. A physical signal space is subsequently created by collecting visual and tactile data from these textures. Finally, a deep learning architecture integrating a CNN-based autoencoder for visual feature learning and a ConvLSTM network for tactile data processing is trained to predict user-assigned attribute ratings. This multi-modal, multi-feature approach maps physical signals to perceptual ratings, enabling accurate predictions for unseen textures. To evaluate predictive accuracy, we employed leave-one-out cross-validation to rigorously assess the model's reliability and generalizability against several machine learning and deep learning baselines. Experimental results demonstrate that the framework consistently outperforms single-modality approaches, achieving lower MAE and RMSE, highlighting the efficacy of combining visual and tactile modalities.
Mudassir Ibrahim Awan、Seokhee Jeon
计算技术、计算机技术
Mudassir Ibrahim Awan,Seokhee Jeon.Estimating Perceptual Attributes of Haptic Textures Using Visuo-Tactile Data[EB/OL].(2025-05-22)[2025-06-14].https://arxiv.org/abs/2505.16352.点此复制
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