Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN. / Hassan, Waseem; Joolee, Joolekha Bibi; Jeon, Seokhee.

In: Scientific Reports, Vol. 13, No. 1, 11684, 12.2023.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Hassan, W, Joolee, JB & Jeon, S 2023, 'Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN', Scientific Reports, vol. 13, no. 1, 11684. https://doi.org/10.1038/s41598-023-38929-6

APA

Hassan, W., Joolee, J. B., & Jeon, S. (2023). Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN. Scientific Reports, 13(1), [11684]. https://doi.org/10.1038/s41598-023-38929-6

Vancouver

Hassan W, Joolee JB, Jeon S. Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN. Scientific Reports. 2023 Dec;13(1). 11684. https://doi.org/10.1038/s41598-023-38929-6

Author

Hassan, Waseem ; Joolee, Joolekha Bibi ; Jeon, Seokhee. / Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN. In: Scientific Reports. 2023 ; Vol. 13, No. 1.

Bibtex

@article{534456fe246c493490c9831342b99f8d,
title = "Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN",
abstract = "The current study strives to provide a haptic attribute space where texture surfaces are located based on their haptic attributes. The main aim of the haptic attribute space is to come up with a standardized model for representing and identifying haptic textures analogous to the RGB model for colors. To this end, a four dimensional haptic attribute space is established by conducting a psychophysical experiment where human participants rate 100 real-life texture surfaces according to their haptic attributes. The four dimensions of the haptic attribute space are rough-smooth, flat-bumpy, sticky-slippery, and hard-soft. The generalization and scalability of the haptic attribute space is achieved by training a 1D-CNN model for predicting attributes of haptic textures. The 1D-CNN is trained using the attribute data from psychophysical experiments and image features collected from the images of real textures. The prediction power granted by the 1D-CNN renders scalability to the haptic attribute space. The prediction accuracy of the proposed 1D-CNN model is compared against other machine learning and deep learning algorithms. The results show that the proposed method outperforms the other models on MAE and RMSE metrics.",
author = "Waseem Hassan and Joolee, {Joolekha Bibi} and Seokhee Jeon",
note = "Funding Information: This research was supported in part by the IITP under the Ministry of Science and ICT Korea through the ITRC program (IITP-2023-RS-2022-00156354) and in part by the Preventive Safety Service Technology Development Program funded by the Korean Ministry of Interior and Safety under Grant 2019-MOIS34-001. Publisher Copyright: {\textcopyright} 2023, The Author(s).",
year = "2023",
month = dec,
doi = "10.1038/s41598-023-38929-6",
language = "English",
volume = "13",
journal = "Scientific Reports",
issn = "2045-2322",
publisher = "nature publishing group",
number = "1",

}

RIS

TY - JOUR

T1 - Establishing haptic texture attribute space and predicting haptic attributes from image features using 1D-CNN

AU - Hassan, Waseem

AU - Joolee, Joolekha Bibi

AU - Jeon, Seokhee

N1 - Funding Information: This research was supported in part by the IITP under the Ministry of Science and ICT Korea through the ITRC program (IITP-2023-RS-2022-00156354) and in part by the Preventive Safety Service Technology Development Program funded by the Korean Ministry of Interior and Safety under Grant 2019-MOIS34-001. Publisher Copyright: © 2023, The Author(s).

PY - 2023/12

Y1 - 2023/12

N2 - The current study strives to provide a haptic attribute space where texture surfaces are located based on their haptic attributes. The main aim of the haptic attribute space is to come up with a standardized model for representing and identifying haptic textures analogous to the RGB model for colors. To this end, a four dimensional haptic attribute space is established by conducting a psychophysical experiment where human participants rate 100 real-life texture surfaces according to their haptic attributes. The four dimensions of the haptic attribute space are rough-smooth, flat-bumpy, sticky-slippery, and hard-soft. The generalization and scalability of the haptic attribute space is achieved by training a 1D-CNN model for predicting attributes of haptic textures. The 1D-CNN is trained using the attribute data from psychophysical experiments and image features collected from the images of real textures. The prediction power granted by the 1D-CNN renders scalability to the haptic attribute space. The prediction accuracy of the proposed 1D-CNN model is compared against other machine learning and deep learning algorithms. The results show that the proposed method outperforms the other models on MAE and RMSE metrics.

AB - The current study strives to provide a haptic attribute space where texture surfaces are located based on their haptic attributes. The main aim of the haptic attribute space is to come up with a standardized model for representing and identifying haptic textures analogous to the RGB model for colors. To this end, a four dimensional haptic attribute space is established by conducting a psychophysical experiment where human participants rate 100 real-life texture surfaces according to their haptic attributes. The four dimensions of the haptic attribute space are rough-smooth, flat-bumpy, sticky-slippery, and hard-soft. The generalization and scalability of the haptic attribute space is achieved by training a 1D-CNN model for predicting attributes of haptic textures. The 1D-CNN is trained using the attribute data from psychophysical experiments and image features collected from the images of real textures. The prediction power granted by the 1D-CNN renders scalability to the haptic attribute space. The prediction accuracy of the proposed 1D-CNN model is compared against other machine learning and deep learning algorithms. The results show that the proposed method outperforms the other models on MAE and RMSE metrics.

U2 - 10.1038/s41598-023-38929-6

DO - 10.1038/s41598-023-38929-6

M3 - Journal article

C2 - 37468571

AN - SCOPUS:85165402391

VL - 13

JO - Scientific Reports

JF - Scientific Reports

SN - 2045-2322

IS - 1

M1 - 11684

ER -

ID: 388954867