Fast Self-Attention Deep Detection Network Based on Weakly Differentiated Plant Nematodess

Author:

Zhuang JiayanORCID,Liu Yangming,Xu Ningyuan,Zhu Yi,Xiao Jiangjian,Gu Jianfeng,Mao Tianyi

Abstract

High-precision, high-speed detection and classification of weakly differentiated targets has always been a difficult problem in the field of image vision. In this paper, the detection of phytopathogenic Bursaphelenchus xylophilus with small size and very weak inter-species differences is taken as an example. Our work is aimed at the current problem of weakly differentiated target detection: We propose a lightweight self attention network. Experiments show that the key feature recognition areas of plant nematodes found by our Self Attention network are in good agreement with the experience and knowledge of customs experts, and the feature areas found by this method can obtain higher detection accuracy than expert knowledge; In order to optimize the computing power brought by the whole image input, we use low resolution images to quickly obtain the location coordinates of key features, and then obtain the information of high resolution feature regions based on the coordinates; The adaptive weighted multi feature joint detection method based on heat map brightness is adopted to further improve the detection accuracy; We have constructed a more complete high-resolution training data set, involving 24 species of Equisetum and other common hybrids, with a total data volume of more than 10,000. The algorithm proposed in this paper replaces the tedious extensive manual labelling in the training process, improves the average training time of the model by more than 50%, reduces the testing time of a single sample by about 27%, optimizes the model storage size by 65%, improves the detection accuracy of the ImageNet pre-trained model by 12.6%, and improves the detection accuracy of the no-ImageNet pre-trained model by more than 48%.

Funder

Ningbo Science and Technology Innovation Project

Scientific Research Project of the General Administration of Customs

National Natural Science Foundations of China

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference25 articles.

1. Current Nematode Threats to World Agriculture

2. The impact of plant-parasitic nematodes on agriculture and methods of control;Bernard;Nematol. -Concepts Diagn. Control.,2017

3. Methods for extraction, processing and detection of plant and soil nematodes;Hallmann;Plant Parasit. Nematodes Subtrop. Trop. Agric.,2018

4. Classification of multi-focal nematode image stacks using a projection based multilinear approach;Liu;Proceedings of the 2017 IEEE International Conference on Image Processing (ICIP),2017

5. Edge Detection Using Convolutional Neural Networks for Nematode Development and Adaptation Analysis;Chou;Proceedings of the International Conference on Computer Vision Systems

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