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An Angular Acceleration Based Looming Detector for Moving UAVs.

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posted on 2024-02-14, 12:58 authored by Jiannan Zhao, Quansheng Xie, Feng Shuang, Shigang Yue

Visual perception equips unmanned aerial vehicles (UAVs) with increasingly comprehensive and instant environmental perception, rendering it a crucial technology in intelligent UAV obstacle avoidance. However, the rapid movements of UAVs cause significant changes in the field of view, affecting the algorithms' ability to extract the visual features of collisions accurately. As a result, algorithms suffer from a high rate of false alarms and a delay in warning time. During the study of visual field angle curves of different orders, it was found that the peak times of the curves of higher-order information on the angular size of looming objects are linearly related to the time to collision (TTC) and occur before collisions. This discovery implies that encoding higher-order information on the angular size could resolve the issue of response lag. Furthermore, the fact that the image of a looming object adjusts to meet several looming visual cues compared to the background interference implies that integrating various field-of-view characteristics will likely enhance the model's resistance to motion interference. Therefore, this paper presents a concise A-LGMD model for detecting looming objects. The model is based on image angular acceleration and addresses problems related to imprecise feature extraction and insufficient time series modeling to enhance the model's ability to rapidly and precisely detect looming objects during the rapid self-motion of UAVs. The model draws inspiration from the lobula giant movement detector (LGMD), which shows high sensitivity to acceleration information. In the proposed model, higher-order information on the angular size is abstracted by the network and fused with multiple visual field angle characteristics to promote the selective response to looming objects. Experiments carried out on synthetic and real-world datasets reveal that the model can efficiently detect the angular acceleration of an image, filter out insignificant background motion, and provide early warnings. These findings indicate that the model could have significant potential in embedded collision detection systems of micro or small UAVs.

Funding

Bagui Scholar Program of Guangxi; in part by the National Natural Science Foundation of China, grant numbers 62206065, 61773359, and 61720106009

European Union’s Horizon 2020 research and innovation program under the Marie Sklodowska-Curie grant agreement (No. 778062 ULTRACEPT)

History

Author affiliation

School of Computing and Mathematical Sciences, University of Leicester

Version

  • VoR (Version of Record)

Published in

Biomimetics (Basel, Switzerland)

Volume

9

Issue

1

Pagination

22

Publisher

MDPI AG

issn

2313-7673

eissn

2313-7673

Copyright date

2023

Available date

2024-02-14

Spatial coverage

Switzerland

Language

eng

Deposited by

Professor Shigang Yue

Deposit date

2024-02-02

Data Access Statement

The data of simulation and the source codes can be found via https://github.com/chasen-xqs/ALGMD (accessed on 6 October 2023).

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