Citrus juices and fruits are commodities with great economic potential in the international market, but productivity losses caused by mites and other pests are still far from being a good mark. Despite the integrated pest mechanical aspect, only a few works on automatic classification have handled images with orange mite characteristics, which means tiny and noisy regions of interest. On the computational side, attention-based models have gained prominence in deep learning research, and, along with weakly supervised learning algorithms, they have improved tasks performed with some label restrictions. In agronomic research of pests and diseases, these techniques can improve classification performance while pointing out the location of mites and insects without specific labels, reducing deep learning development costs related to generating bounding boxes. In this context, this work proposes an attention-based activation map approach developed to improve the classification of tiny regions called Two-Weighted Activation Mapping, which also produces locations using feature map scores learned from class labels. We apply our method in a two-stage network process called Attention-based Multiple Instance Learning Guided by Saliency Maps. We analyze the proposed approach in two challenging datasets, the Citrus Pest Benchmark, which was captured directly in the field using magnifying glasses, and the Insect Pest, a large pest image benchmark. In addition, we evaluate and compare our models with weakly supervised methods, such as Attention-based Deep MIL and WILDCAT. The results show that our classifier is superior to literature methods that use tiny regions in their classification tasks, surpassing them in all scenarios by at least 16 percentage points. Moreover, our approach infers bounding box locations for salient insects, even training without any location labels.
翻译:在国际市场上,柑橘汁和水果是具有巨大经济潜力的商品,在国际市场上具有巨大的经济潜力,但是,在对害虫和其他害虫的农业学研究中,由于老鼠和其他害虫造成的生产力损失仍然远远不是一个好标记。尽管综合虫害机械学方面,只有少数关于自动分类的工程处理的是具有橙色微粒特性的图像,这意味着兴趣小和吵闹的区域。在计算方面,基于关注的模型在深层次的学习研究中占据了突出地位,并且加上监督不力的学习算法,这些模型改进了在标签限制下完成的工作。在对害虫和疾病进行农业学学研究时,这些技术可以提高分类的绩效,同时指出没有具体标签的微粒和昆虫的位置,降低与生成捆绑箱有关的深度学习发展成本。在这方面,这项工作提出了一种基于关注的活性地图方法,目的是改进小区域的分类,称为“二重力活动图图”,我们用基于关注的多例的分类方法,我们用两个最小的百分数分析方法来分析拟议的方法,在不具有具体标签的深度的精细微的标点上,在深度的精度上,我们用精确的比,在镜上,我们所有的比标定点上,我们所有的精度上,我们用高的比法, 显示了我们所有的镜上,我们所有的基底的基底的比法,我们所有的比,我们所有的基底, 显示。