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Research on insect pest image detection and recognition based on bio-inspired methods

机译:基于生物启发方法的昆虫害虫图像检测与识别研究

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Insect pest recognition and detection are vital for food security, a stable agricultural economy and quality of life. To realise rapid detection and recognition of insect pests, methods inspired by human visual system were proposed in this paper. Inspired by human visual attention, Saliency Using Natural statistics model (SUN) was used to generate saliency maps and detect region of interest (ROI) in a pest image. To extract the invariant features for representing the pest appearance, we extended the bio-inspired Hierarchical Model and X (HMAX) model in the following ways. Scale Invariant Feature Transform (SIFT) was integrated into the HMAX model to increase the invariance to rotational changes. Meanwhile, Non-negative Sparse Coding (NNSC) is used to simulate the simple cell responses. Moreover, invariant texture features were extracted based on Local Configuration Pattern (LCP) algorithm. Finally, the extracted features were fed to Support Vector Machines (SVM) for recognition. Experimental results demonstrated that the proposed method had an advantage over the compared methods: HMAX, Sparse Coding and Natural Input Memory with Bayesian Likelihood Estimation (NIMBLE), and was comparable to the Deep Convolutional Network. The proposed method has achieved a good result with a recognition rate of 85.5% and could effectively recognise insect pest under complex environments. The proposed method has provided a new approach for insect pest detection and recognition. (C) 2018 IAgrE. Published by Elsevier Ltd. All rights reserved.
机译:昆虫害虫识别和检测对于粮食安全至关重要,农业经济稳定和生活质量。为了实现昆虫害虫的快速检测和识别,本文提出了由人类视觉系统启发的方法。灵感来自人类视觉关注,使用自然统计模型(Sun)的显着性用于在害虫图像中产生显着图和检测感兴趣区域(ROI)。要提取表示害虫外观的不变特征,我们以下列方式扩展了生物启发的分层模型和X(HMAX)模型。缩放不变功能转换(SIFT)集成到HMAX模型中,以增加旋转变​​化的不变性。同时,非负稀疏编码(NNSC)用于模拟简单的细胞响应。此外,基于本地配置模式(LCP)算法提取不变的纹理特征。最后,提取的特征被馈送以支持向量机(SVM)以识别。实验结果表明,该方法的优势在比较的方法中:HMAX,稀疏编码和具有贝叶斯似然估计(灵活性)的自然输入记忆,并且与深卷积网络相当。该方法已经实现了良好的效果,识别率为85.5%,可以在复杂的环境下有效地识别昆虫害虫。该方法为昆虫害虫检测和识别提供了一种新方法。 (c)2018年IAGRE。 elsevier有限公司出版。保留所有权利。

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