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Main Authors: Ma, Chuanyang, Li, Jiangtao, Qi, Xingqun, Sun, Muyi, Zhou, Huiling
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2409.07483
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author Ma, Chuanyang
Li, Jiangtao
Qi, Xingqun
Sun, Muyi
Zhou, Huiling
author_facet Ma, Chuanyang
Li, Jiangtao
Qi, Xingqun
Sun, Muyi
Zhou, Huiling
contents Pest infestations pose a significant risk to both the quality and quantity of stored grain, resulting in substantial economic losses. Accurate and timely pest monitoring is essential, but traditional methods are time-consuming and labor-intensive, and often ineffective at detecting pests beneath the grain surface. In this paper, we introduce a systematic framework: Pest Manager for precise pest counting and identification within the invisible grain pile environment. The framework consists of three components: an improved grain probe trap PestMoni, a pest drop dataset PestSet collected by PestMoni, and a multi-task Transformer-based architecture PestFormer for pest counting and identification. Specifically, PestMoni uses an asymmetric layout of infrared diodes and photodiodes, enabling precise recording of pest drops. Based on PestMoni, we develop PestSet, an infrared-perception dataset for pest drops, including five common grain storage pests. Furthermore, we propose PestFormer, a multi-task model with a conditional modification module to reduce deviations across different PestMonis and thereby normalize the data processing workflow. Extensive experiments validate the design, dataset, and model, with PestFormer achieving state-of-the-art accuracies of 99.2% in counting and 86.9% in identification, highlighting its potential for effective pest management in invisible storage environment.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07483
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Pest Manager: A Systematic Framework for Precise Pest Counting and Identification in Invisible Grain Pile Storage Environment
Ma, Chuanyang
Li, Jiangtao
Qi, Xingqun
Sun, Muyi
Zhou, Huiling
Signal Processing
Pest infestations pose a significant risk to both the quality and quantity of stored grain, resulting in substantial economic losses. Accurate and timely pest monitoring is essential, but traditional methods are time-consuming and labor-intensive, and often ineffective at detecting pests beneath the grain surface. In this paper, we introduce a systematic framework: Pest Manager for precise pest counting and identification within the invisible grain pile environment. The framework consists of three components: an improved grain probe trap PestMoni, a pest drop dataset PestSet collected by PestMoni, and a multi-task Transformer-based architecture PestFormer for pest counting and identification. Specifically, PestMoni uses an asymmetric layout of infrared diodes and photodiodes, enabling precise recording of pest drops. Based on PestMoni, we develop PestSet, an infrared-perception dataset for pest drops, including five common grain storage pests. Furthermore, we propose PestFormer, a multi-task model with a conditional modification module to reduce deviations across different PestMonis and thereby normalize the data processing workflow. Extensive experiments validate the design, dataset, and model, with PestFormer achieving state-of-the-art accuracies of 99.2% in counting and 86.9% in identification, highlighting its potential for effective pest management in invisible storage environment.
title Pest Manager: A Systematic Framework for Precise Pest Counting and Identification in Invisible Grain Pile Storage Environment
topic Signal Processing
url https://arxiv.org/abs/2409.07483