Locust Recognition and Detection via Aggregate Channel Features

Dewei Yi, Jinya Su, Wen‐Hua Chen
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引用次数: 6

Abstract

Locust plagues are very harmful for food security, quality and quantity of agricultural products. With this consideration, precise locust detection is significant for preventing locust plagues. To achieve this task, aggregate channel feature (ACF) object detector with parameters optimization is applied to detect locusts. Experiment results show that ACF object detector with optimized parameters can achieve 0.39 for average precision and 0.86 for log-average miss rate. Moreover, ACF is a non-deep method using a simple model to detect objects. That is, the proposed method is promising to be embedded in a real-time locust detection system.
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基于聚合信道特征的蝗虫识别与检测
蝗灾对粮食安全、农产品质量和数量造成严重危害。考虑到这一点,精确的蝗虫检测对于预防蝗灾具有重要意义。为此,采用参数优化的聚合通道特征(ACF)目标检测器对蝗虫进行检测。实验结果表明,优化后的ACF目标检测器的平均精度为0.39,对数平均脱靶率为0.86。此外,ACF是一种使用简单模型来检测对象的非深度方法。也就是说,所提出的方法有望嵌入到实时蝗虫检测系统中。
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