The University of Electro-Communications, Graduate School of Informatics and Engineering Departments, Department of Informatics 1-5-1 ChofugaokaChofu, Japan
The University of Electro-Communications, Graduate School of Informatics and Engineering Departments, Department of Informatics 1-5-1 ChofugaokaChofu, Japan
The University of Electro-Communications, Graduate School of Informatics and Engineering Departments, Department of Informatics 1-5-1 ChofugaokaChofu, Japan
The University of Electro-Communications, Graduate School of Informatics and Engineering Departments, Department of Informatics 1-5-1 ChofugaokaChofu, Japan
This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Acevedo-Duque, Á., G. R. Llanos-Herrera, E. E. García-Salirrosas, S. Simón-Isidoro, A. P. Álvarez-Herranz, R. Álvarez-Becerra, L. C. Sánchez Díaz. Scientometric Analysis of Hiking Tourism and Its Relevance for Wellbeing and Knowledge Management. – International Journal of Environmental Research and Public Health, Vol. 19, 2022, No 14, 8534.Search in Google Scholar
Apollo, M. The True Accessibility of Mountaineering: The Case of the High Himalaya. – Journal of Outdoor Recreation and Tourism, Vol. 17, 2017, pp. 29-43.Search in Google Scholar
2024 Outdoor Participation Trends Report, Outdoor Industry Association (Online, Last accessed 30 October 2024). https://outdoorindustry.org/article/2024-outdoor-participation-trends-report/Search in Google Scholar
Rauch, S., B. Wallner, M. Ströhle, T. Dal Cappello, M. Brodmann Maeder. Climbing Accidents – Prospective Data Analysis from the International Alpine Trauma Registry and Systematic Review of the Literature. – International Journal of Environmental Research and Public Health, Vol. 17, 2019, No 1, 203.Search in Google Scholar
Gasser, B., F. Schwendinger. 4000ers of the Alps – So Beautiful, so Dangerous: An Analysis of Falls in the Swiss Alps between 2009–2020. – PLOS ONE, Vol. 17, 2022, No 4, e0266032.Search in Google Scholar
Yosemite, Park Statistics, National Park Service, 20.1.2022 (Online, Last accessed 30 October 2024). https://www.nps.gov/yose/learn/management/statistics.htmSearch in Google Scholar
Hiking and Mountain-Climbing Incidents in Japan Rise to Record High in 2023, nippon.com, 2 July 2024 (Online, Last accessed 30 October 2024). https://www.nippon.com/en/japan-data/h02025/Search in Google Scholar
Dimitrova, Z., V. Dimitrov, D. Borissova, I. Garvanov, M. Garvanova. Two-Stage Search-Based Approach for Determining and Sorting of Mountain Hiking Routes Using Directed Weighted Multigraph. – Cybernetics and Information Technologies, Vol. 20, 2020, No 6.Search in Google Scholar
Molokáč, M., J. Hlaváčová, D. Tometzová, E. Liptáková. The Preference Analysis for Hikers’ Choice of Hiking Trail. – Sustainability, Vol. 14, 2022, No 11, 6795.Search in Google Scholar
Mitten, D., J. R. Overholt, F. I. Haynes, C. C. D’Amore, J. C. Ady. Hiking: A Low-Cost, Accessible Intervention to Promote Health Benefits. – American Journal of Lifestyle Medicine, Vol. 12, 2018, No 4, pp. 302-310.Search in Google Scholar
Burtscher, M. Exercise Capacity for Mountaineering: How Much Is Necessary? – Research in Sports Medicine, Vol. 12, 2004, No 4, pp. 241-250.Search in Google Scholar
AllTrails (Online, Last accessed 30 October 2024). https://www.alltrails.com/Search in Google Scholar
Naismith, W. W. Cruach Ardran, Stobinian, and Ben More. – The Scottish Mountaineering Club Journal, 1892, pp. 135-136.Search in Google Scholar
Tobler, W. Three Presentations on Geographical Analysis and Modeling. – National Center for Geographic Information and Analysis, 1993.Search in Google Scholar
Campbell, M. J., P. E. Dennison, M. P. Thompson. Predicting the Variability in Pedestrian Travel Rates and Times Using Crowdsourced GPS Data. – Computers, Environment and Urban Systems, Vol. 97, 2022.Search in Google Scholar
Wood, A., W. Mackaness, T. I. Simpson, J. D. Armstrong. Improved Prediction of Hiking Speeds Using a Data-Driven Approach. – PLOS One, 2023.Search in Google Scholar
Wang, H., Z. Li, Y.-H. Kuo, D. Kifer. A Simple Baseline for Travel Time Estimation Using Large-Scale Trip Data. – ACM Transactions on Intelligent Systems and Technology, Vol. 10, 2019, No 2, pp. 1-19.Search in Google Scholar
Zhou, S., L. Brunke, A. Tao, A. W. Hall, F. P. Bejarano, J. Panerati, A. P. Schoellig. What is the Impact of Releasing Code with Publications? Statistics from the Machine Learning, Robotics, and Control Communities. – IEEE Control Systems Magazine, Vol. 44, 2024, No 4, pp. 38-46.Search in Google Scholar
Wang, D., J. Zhang, W. Cao, J. Li, Y. Zheng. When Will You Arrive? Estimating Travel Time Based on Deep Neural Networks. – In: Proc. of 32th AAAI Conference on Artificial Intelligence, Vol. 32, 2018.Search in Google Scholar
Mashurov, V., V. Chopuryan, V. Porvatov, A. Ivanov, N. Semenova. Gct-TTE: Graph Convolutional Transformer for Travel Time Estimation. – Journal of Big Data, Vol. 11, 2024, No 15.Search in Google Scholar
YAMAP, YAMAP, Inc. (Online, Last accessed 30 October 2024). https://yamap.com/Search in Google Scholar
YamaReco, Yamareco, Inc. (Online, Last accessed 30 October 2024). https://www.yamareco.com/Search in Google Scholar
Arnet, F. Arithmetical Route Analysis with Examples of the Long Final Courses of the World Orienteering Championships 2003 in Switzerland and 2005 in Japan. – Scientific Journal of Orienteering, Vol. 17, 2009, Issue 1, pp. 4-21.Search in Google Scholar
Hochreiter, S., J. Schmidhuber. Long Short-Term Memory. – Neural Computation, Vol. 9, 1997, No 8, pp. 1735-1780.Search in Google Scholar
Wang, C., F. Zhao, H. Zhang, H. Luo, Y. Qin, Y. Fang. Fine-Grained Trajectory-Based Travel Time Estimation for Multi-City Scenarios Based on Deep Meta-Learning. – IEEE Transactions on Intelligent Transportation Systems, Vol. 23, 2022, No 9, pp. 15716-15728.Search in Google Scholar
GPS Recorded Hikes from hikr.org, Kaggle (Online, Last accessed 30 October 2024). https://www.kaggle.com/datasets/roccoli/gpx-hike-tracksSearch in Google Scholar
NASA JPL (2020). NASADEM Merged DEM Global 1 arc second V001 [Data set], NASA EOSDIS Land Processes DAAC (Online, Last accessed 30 October 2024). DOI:10.5067/MEaSUREs/NASADEM/NASADEM_HGT.001.Search in Google Scholar
Porter, C., P. Morin, I. Howat, M.-J. Noh, B. Bates, K. Peterman, S. Keesey, M. Schlenk, J. Gardiner, K. Tomko, M. Willis, C. Kelleher, M. Cloutier, E. Husby, S. Foga, H. Nakamura, Pl. ArcticDEM, Version 3. – Harvard Dataverse (Online, Last accessed 30 October 2024). DOI:10.7910/DVN/OHHUKH.Search in Google Scholar
De Castro, H. D. R. N., O. A. de Carvalho Júnior, O. L. F. de Carvalho, R. A. T. Gomes, R. F. Guimarães. Detection of Karst Depression in Brazil Comparing Different Semantic and Instance Segmentations and Global Digital Elevation Models. – Geomorphology, Vol. 456, 2024, 109212.Search in Google Scholar
Amatya, P., R. Emberson, D. Kirschbaum. Multitemporal Landslide Inventory and Susceptibility Map for the Arun River Basin, Nepal. – Geoscience Data Journal, 2024.Search in Google Scholar
Dai, C., I. M. Howat, J. van der Sluijs, A. K. Liljedahl, B. Higman, J. T. Freymueller, P. Marsh. Applications of ArcticDEM for Measuring Volcanic Dynamics, Landslides, Retrogressive Thaw Slumps, Snowdrifts, and Vegetation Heights. – Science of Remote Sensing, Vol. 9, 2024, 100130.Search in Google Scholar
Luo, L. H., C. Q. Ke, Y. B. Fan. A 2012-2021 High-Resolution Glacier Mass Balance Estimate for Icelandic Ice Caps Based on ArcticDEM and ICESat-2. – Earth Surface Processes and Landforms, Vol. 49, 2024, No 9, pp. 2751-2766.Search in Google Scholar
Kingma, D. P., L. J. Ba. Adam: A Method for Stochastic Optimization. – In: Proc. of International Conference on Learning Representations (ICLR’15), 2015.Search in Google Scholar