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Ingegneria Sismica

Ingegneria Sismica

Real-time Pest Detection in Complex Forestry Scenarios: An Adaptive Deep Learning Approach for Sustainable Forest Health Monitoring

Author(s): Juhu Li1,2, Shihao Li1,2, Yuli Xu1,2, Jia Lu1,2, Feng Yang1,2
1School of Information Science and Technology, Beijing Forestry University, Beijing 100083, China
2Engineering Research Center for Forestry-Oriented Intelligent Information Processing of National Forestry and Grassland Administration, Beijing 100083, China
Li, Juhu . et al “Real-time Pest Detection in Complex Forestry Scenarios: An Adaptive Deep Learning Approach for Sustainable Forest Health Monitoring.” Ingegneria Sismica Volume 43 Issue 2: 1-25, doi:10.65102/is2026998.

Abstract

Timely monitoring and control of forest pests is of great significance for maintaining forest health, carbon sequestration and biodiversity. However, due to the influence of environmental factors such as rain, fog and insufficient light, it is often very difficult to track forest pests in the field, which leads to the deterioration of image quality and is difficult to use traditional methods for detection. In this paper, a new deep learning method PCSNet is proposed. In order to solve the problem of forest pest detection under harsh conditions, Chain of Mind Prompt Adaptive (CPA) enhancement module is added to the network, which can perform autonomous super-resolution enhancement for different degradation types of images. Wavelet Transform convolution (WTConv) and wavelet transform Down-sampling module (ADown) were proposed to speed up model convergence and optimize network performance. In addition, for edge devices, we have developed PCSNet-Light, a pruned and refined version that enables smaller model sizes with high accuracy. Experiments show that when using Raspberry PI 5 as the hardware platform, the mAP50 of PCSNet-Light reaches a high level of 96.6%, while maintaining a real-time detection speed of 15.67FPS while greatly reducing the number of parameters by 5 million. This micro-resolution strategy not only enhances the accuracy of pest detection, but also supports efficient and scalable pest monitoring systems that can help achieve more sustainable forest management actions.

 

Keywords
Sustainable forest management; Forest pests and diseases detection; Complex scenes; Edge computation; Deep learning; Real-time monitoring; Image quality enhancement

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