Welcome to the IKCEST

Automation in Construction | Vol.142, Issue. | 2022-10-01 | Pages 104499

Automation in Construction

SODA: A large-scale open site object detection dataset for deep learning in construction

Hui Deng   Jiarui Lin   Rui Duan   Yichuan Deng   Mao Tian  
Abstract

Comprehensive image datasets can benefit the construction industry in terms of serving as the basis for generating deep-learning-based object detection models and testing the performance of object detection algorithms, but building such datasets is complex and requires vast professional knowledge. This paper develops and publicly releases a new large-scale image dataset specifically collected and annotated for the construction site, called Site Object Detection Dataset (SODA), which contains 15 object classes categorized by the worker, material, machine, and layout. >20,000 images were collected from multiple construction sites in different situations, weather conditions, and construction phases, covering different angles and perspectives. Statistical analysis shows that the dataset is well developed in terms of diversity and volume. Further evaluation with two widely-adopted deep learning-based object detection algorithms also illustrates the feasibility of the dataset, achieving a maximum mAP of 81.47%. This research contributes a large-scale open image dataset for the construction industry and sets up a performance benchmark for further evaluation of relevant algorithms.

Original Text (This is the original text for your reference.)

SODA: A large-scale open site object detection dataset for deep learning in construction

Comprehensive image datasets can benefit the construction industry in terms of serving as the basis for generating deep-learning-based object detection models and testing the performance of object detection algorithms, but building such datasets is complex and requires vast professional knowledge. This paper develops and publicly releases a new large-scale image dataset specifically collected and annotated for the construction site, called Site Object Detection Dataset (SODA), which contains 15 object classes categorized by the worker, material, machine, and layout. >20,000 images were collected from multiple construction sites in different situations, weather conditions, and construction phases, covering different angles and perspectives. Statistical analysis shows that the dataset is well developed in terms of diversity and volume. Further evaluation with two widely-adopted deep learning-based object detection algorithms also illustrates the feasibility of the dataset, achieving a maximum mAP of 81.47%. This research contributes a large-scale open image dataset for the construction industry and sets up a performance benchmark for further evaluation of relevant algorithms.

+More

Keywords

Dataset Object SODA

Cite this article
APA

APA

MLA

Chicago

Hui Deng, Jiarui Lin,Rui Duan, Yichuan Deng, Mao Tian,.SODA: A large-scale open site object detection dataset for deep learning in construction. 142 (),104499.

Disclaimer: The translated content is provided by third-party translation service providers, and IKCEST shall not assume any responsibility for the accuracy and legality of the content.
Translate engine
Article's language
English
中文
Pусск
Français
Español
العربية
Português
Kikongo
Dutch
kiswahili
هَوُسَ
IsiZulu
Action
Recommended articles

Report

Select your report category*



Reason*



By pressing send, your feedback will be used to improve IKCEST. Your privacy will be protected.

Submit
Cancel