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Journal Article Detection of moving objects in multi-complex environments using selective attention networks (SANet)
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Authors
Jaemin Cho, Kyekyung Kim
Issue Date
2023-11
Citation
Automation in Construction, v.155, pp.1-17
ISSN
0926-5805
Publisher
Elsevier BV
Language
English
Type
Journal Article
DOI
https://dx.doi.org/10.1016/j.autcon.2023.105066
Abstract
Object detection studies aim to solve safety problems at industrial sites; however, improving object detection performance and ensuring real-time capabilities simultaneously remains challenging in multi-complex industrial environments. This paper proposes an unconditionally protected detector to address this problem. The detector's backbone network uses a residual block with a bottleneck structure to reduce computation and enhance real-time performance. Additionally, a selective attention network enhances object detection by extracting important features based on the morphological characteristics of the feature map in the neck structure. The method includes a whole-body estimation to locate individuals obstructed by obstacles, thereby preventing collisions with vehicles and avoiding hazardous situations in restricted areas. The proposed method enables real-time object detection and risk assessment for nearby objects, enhancing safety for industrial vehicle drivers and workers. Moreover, it can lead to further improvements in object detection performance in research fields such as autonomous driving and AI CCTV utilizing cameras.
KSP Keywords
Backbone Network, Bottleneck structure, Feature map, Industrial environment, Morphological characteristics, Real-time object detection, Risk Assessment, Selective attention, Whole-body, attention networks, autonomous driving
This work is distributed under the term of Creative Commons License (CCL)
(CC BY NC)
CC BY NC