IPIs caused by protozoan and helminth parasites are among the most common infections in humans in LMICs. They are regarded as a severe public health concern, as they cause a wide array of potentially detrimental health conditions. Researchers have been developing pattern recognition techniques for the automatic identification of parasite eggs in microscopic images. Existing solutions still need improvements to reduce diagnostic errors and generate fast, efficient, and accurate results. Our paper addresses this and proposes a multi-modal learning detector to localize parasitic eggs and categorize them into 11 categories. The experiments were conducted on the novel Chula-ParasiteEgg-11 dataset that was used to train both EfficientDet model with EfficientNet-v2 backbone and EfficientNet-B7+SVM. The dataset has 11,000 microscopic training images from 11 categories. Our results show robust performance with an accuracy of 92%, and an F1 score of 93%. Additionally, the IOU distribution illustrates the high localization capability of the detector.
翻译:由原生动物和亚虫寄生虫引起的免疫缺陷指数是LMICs人类最常见的感染之一,被认为是一个严重的公共健康问题,因为它们引起一系列潜在的有害卫生条件。研究人员一直在开发模式识别技术,以便在微粒图像中自动识别寄生蛋。现有的解决方案仍然需要改进,以减少诊断错误并产生快速、高效和准确的结果。我们的论文对此作了阐述,并提议建立一个多式学习检测器,将寄生虫蛋本地化并将其分类为11个类别。实验是在新颖的Chula-ParasiteEgg-11数据集上进行的,该数据集用来用高效网络-V2骨干和高效网络-B7+SVM来培训高效的Det 模型。该数据集有11 000个来自11个类别的微观培训图像。我们的结果显示,精确率为92%,F1分为93%。此外,IOU的分布显示探测器具有高度的本地化能力。