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Localization and Classification of Paddy Field Pests using a Saliency Map and Deep Convolutional Neural Network

机译:使用显着性图和深卷积神经网络的稻田害虫的本地化和分类

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摘要

We present a pipeline for the visual localization and classification of agricultural pest insects by computing a saliency map and applying deep convolutional neural network (DCNN) learning. First, we used a global contrast region-based approach to compute a saliency map for localizing pest insect objects. Bounding squares containing targets were then extracted, resized to a fixed size, and used to construct a large standard database called Pest ID. This database was then utilized for self-learning of local image features which were, in turn, used for classification by DCNN. DCNN learning optimized the critical parameters, including size, number and convolutional stride of local receptive fields, dropout ratio and the final loss function. To demonstrate the practical utility of using DCNN, we explored different architectures by shrinking depth and width, and found effective sizes that can act as alternatives for practical applications. On the test set of paddy field images, our architectures achieved a mean Accuracy Precision (mAP) of 0.951, a significant improvement over previous methods.
机译:我们通过计算显着图和应用深卷积神经网络(DCNN)学习来提出一种用于视觉定位和农业害虫昆虫分类的管道。首先,我们使用了基于对比区域的基于对比区域的方法来计算用于定位害虫昆虫物体的显着图。然后提取包含靶标的边界方块,调整为固定大小,并用于构造一个名为Pest ID的大标准数据库。然后利用该数据库用于自学习本地图像特征,其依次用于DCNN的分类。 DCNN学习优化了局部接受领域的尺寸,数量和卷积步伐,辍学率和最终损失功能的临界参数。为了展示使用DCNN的实用实用性,我们通过缩小深度和宽度来探索不同的架构,并发现有效的尺寸可以作为实际应用的替代品。在稻田图像的测试组上,我们的架构实现了0.951的平均精度精度(MAP),对以前的方法进行了显着改善。

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