TY - JOUR
T1 - The HDIN Dataset
T2 - A Real-World Indoor UAV Dataset with Multi-Task Labels for Visual-Based Navigation
AU - Chang, Yingxiu
AU - Cheng, Yongqiang
AU - Murray, John
AU - Huang, Shi
AU - Shi, Guangyi
N1 - Funding Information:
This research was funded by [the China Scholarship Council (CSC)] 202008010003.
Funding Information:
The authors gratefully acknowledge the financial support from the China Scholarship Council (CSC).
Publisher Copyright:
© 2022 by the authors.
PY - 2022/8/11
Y1 - 2022/8/11
N2 - Supervised learning for Unmanned Aerial Vehicle (UAVs) visual-based navigation raises the need for reliable datasets with multi-task labels (e.g., classification and regression labels). However, current public datasets have limitations: (a) Outdoor datasets have limited generalization capability when being used to train indoor navigation models; (b) The range of multi-task labels, especially for regression tasks, are in different units which require additional transformation. In this paper, we present a Hull Drone Indoor Navigation (HDIN) dataset to improve the generalization capability for indoor visual-based navigation. Data were collected from the onboard sensors of a UAV. The scaling factor labeling method with three label types has been proposed to overcome the data jitters during collection and unidentical units of regression labels simultaneously. An open-source Convolutional Neural Network (i.e., DroNet) was employed as a baseline algorithm to retrain the proposed HDIN dataset, and compared with DroNet’s pretrained results on its original dataset since we have a similar data format and structure to the DroNet dataset. The results show that the labels in our dataset are reliable and consistent with the image samples.
AB - Supervised learning for Unmanned Aerial Vehicle (UAVs) visual-based navigation raises the need for reliable datasets with multi-task labels (e.g., classification and regression labels). However, current public datasets have limitations: (a) Outdoor datasets have limited generalization capability when being used to train indoor navigation models; (b) The range of multi-task labels, especially for regression tasks, are in different units which require additional transformation. In this paper, we present a Hull Drone Indoor Navigation (HDIN) dataset to improve the generalization capability for indoor visual-based navigation. Data were collected from the onboard sensors of a UAV. The scaling factor labeling method with three label types has been proposed to overcome the data jitters during collection and unidentical units of regression labels simultaneously. An open-source Convolutional Neural Network (i.e., DroNet) was employed as a baseline algorithm to retrain the proposed HDIN dataset, and compared with DroNet’s pretrained results on its original dataset since we have a similar data format and structure to the DroNet dataset. The results show that the labels in our dataset are reliable and consistent with the image samples.
KW - convolutional neural network (CNN)
KW - indoor visual-based navigation
KW - multi-task labels
KW - real-world UAV dataset
KW - scaling factor labeling
KW - supervised learning
UR - https://www.scopus.com/pages/publications/85137331580
U2 - 10.3390/drones6080202
DO - 10.3390/drones6080202
M3 - Article
AN - SCOPUS:85137331580
SN - 2504-446X
VL - 6
JO - Drones
JF - Drones
IS - 8
M1 - 202
ER -