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Tea chrysanthemum detection under unstructured environments using the TC-YOLO model

Version 4 2024-03-12, 19:58
Version 3 2023-10-29, 17:13
journal contribution
posted on 2024-03-12, 19:58 authored by Chao Qi, Junfeng Gao, Simon PearsonSimon Pearson, Helen HarmanHelen Harman, Kunjie Chen, Lei Shu
<p>Tea chrysanthemum detection at its flowering stage is one of the key components for selective chrysanthemum harvesting robot development. However, it is a challenge to detect flowering chrysanthemums under unstructured field environments given variations on illumination, occlusion and object scale. In this context, we propose a highly fused and lightweight deep learning architecture based on YOLO for tea chrysanthemum detection (TC-YOLO). First, in the backbone component and neck component, the method uses the Cross-Stage Partially Dense network (CSPDenseNet) and the Cross-Stage Partial ResNeXt network (CSPResNeXt) as the main networks, respectively, and embeds custom feature fusion modules to guide the gradient flow. In the final head component, the method combines the recursive feature pyramid (RFP) multiscale fusion reflow structure and the Atrous Spatial Pyramid Pool (ASPP) module with cavity convolution to achieve the detection task. The resulting model was tested on 300 field images using a data enhancement strategy combining flipping and rotation, showing that under the NVIDIA Tesla P100 GPU environment, if the inference speed is 47.23 FPS for each image (416 × 416), TC-YOLO can achieve the average precision (AP) of 92.49% on our own tea chrysanthemum dataset. Through further validation, it was found that overlap had the least effect on tea chrysanthemum detection, and illumination had the greatest effect on tea chrysanthemum detection. In addition, this method (13.6 M) can be deployed on a single mobile GPU, and it could be further developed as a perception system for a selective chrysanthemum harvesting robot in the future.</p>

History

School affiliated with

  • School of Engineering (Research Outputs)

Publication Title

Expert Systems with Applications

Volume

193

Publisher

Elsevier

ISSN

0957-4174

Date Submitted

2022-03-21

Date Accepted

2021-12-26

Date of First Publication

2021-12-31

Date of Final Publication

2022-05-01

Date Document First Uploaded

2022-03-21

ePrints ID

47700