Mushroom image recognition and distance generation based on attention-mechanism model and genetic information
Wenbin Liao, Jiewen Xiao, Chengbo Zhao, Yonggong Han, ZhiJie Geng,, Jianxin Wang, Yihua Yang

TL;DR
This paper introduces MushroomNet, an attention-mechanism based lightweight model for mushroom species recognition, achieving high accuracy and incorporating genetic distance to enhance species identification and image distance prediction.
Contribution
The paper presents a novel attention-based lightweight network, MushroomNet, combined with genetic distance embedding, for improved mushroom recognition and genetic distance prediction.
Findings
Test accuracy of 83.9% on public dataset
Effective focus on mushroom bodies via attention mechanisms
Genetic distance prediction using MES activation function
Abstract
The species identification of Macrofungi, i.e. mushrooms, has always been a challenging task. There are still a large number of poisonous mushrooms that have not been found, which poses a risk to people's life. However, the traditional identification method requires a large number of experts with knowledge in the field of taxonomy for manual identification, it is not only inefficient but also consumes a lot of manpower and capital costs. In this paper, we propose a new model based on attention-mechanism, MushroomNet, which applies the lightweight network MobileNetV3 as the backbone model, combined with the attention structure proposed by us, and has achieved excellent performance in the mushroom recognition task. On the public dataset, the test accuracy of the MushroomNet model has reached 83.9%, and on the local dataset, the test accuracy has reached 77.4%. The proposed attention…
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Taxonomy
TopicsFungal Biology and Applications · Silymarin and Mushroom Poisoning
MethodsTest · *Communicated@Fast*How Do I Communicate to Expedia? · Depthwise Convolution · Pointwise Convolution · Batch Normalization · Depthwise Separable Convolution · Sigmoid Activation · ReLU6 · Dropout · Inverted Residual Block
