The Spotted Lanternfly (SLF) is an invasive planthopper that threatens the local biodiversity and agricultural economy of regions such as the Northeastern United States and Japan. As researchers scramble to study the insect, there is a great potential for computer vision tasks such as detection, pose estimation, and accurate identification to have important downstream implications in containing the SLF. However, there is currently no publicly available dataset for training such AI models. To enable computer vision applications and motivate advancements to challenge the invasive SLF problem, we propose LANTERN-RD, the first curated image dataset of the spotted lanternfly and its look-alikes, featuring images with varied lighting conditions, diverse backgrounds, and subjects in assorted poses. A VGG16-based baseline CNN validates the potential of this dataset for stimulating fresh computer vision applications to accelerate invasive SLF research. Additionally, we implement the trained model in a simple mobile classification application in order to directly empower responsible public mitigation efforts. The overarching mission of this work is to introduce a novel SLF image dataset and release a classification framework that enables computer vision applications, boosting studies surrounding the invasive SLF and assisting in minimizing its agricultural and economic damage.
翻译:斑点绿蝇(SLF)是一种威胁美国东北部和日本等地区当地生物多样性和农业经济的入侵性植物,随着研究人员纷纷研究昆虫,在发现、提出估计和准确识别等计算机视觉任务方面有很大潜力,从而在控制小型森林地方面产生重要的下游影响。然而,目前没有可供公众查阅的用于培训此类AI模型的数据集。为了能够应用计算机视觉并激励进步以挑战侵入性小型森林地问题,我们提议建立发现性飞雀及其外观的图像数据集,第一个集成有不同照明条件、不同背景和各种面貌的图像。基于VGG16的基线CNN确认该数据集在刺激新的计算机视觉应用以加速入侵性小型森林地研究方面的潜力。此外,我们实施简单的移动分类应用中经过培训的模型,以直接增强负责任的公共减灾努力。这项工作的首要任务是引入新型的SLF图像数据集并发布一个分类框架,以便能够应用计算机视觉,推动围绕入侵性小型森林地进行研究,并协助尽量减少其农业和经济损害。