基于Jetson Nano上YOLOv5的印度草本植物显微图像实时目标检测

Yash Jha, Harsh Prajapati, B. Fataniya
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引用次数: 0

摘要

近年来,目标检测得到了很大的发展,硬件和软件技术的进步使得轻松地执行目标检测成为可能。由于现代处理器和图形处理单元(GPU)的增强能力,可以在非常短的时间内完成指数级复杂和大量迭代。近年来,实时目标检测已经变得非常流行和关注的中心,因为普通用户拥有的大多数硬件都足够强大,可以计算,这为在各个领域的众多应用中实现实时目标检测提供了全新的可能性。实时草药植物检测就是这样一个主题,在阿育吠陀药物和许多其他制药应用领域有许多应用,可以用来提高识别这些草药植物的效率,这些草药植物可以用作预防措施,甚至可以作为许多健康问题的治疗方法。现有的实时检测算法有很多,但新的人工神经网络(ANN)和机器学习(ML)技术的发展为实现最新和先进的算法提供了新的途径,这些算法适用于粉末显微图像的实时检测,与现有方法相比,在各个方面都取得了更好的性能。我们的模型被训练用来检测三种微观草本植物。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-Time Object Detection in Microscopic Image of Indian Herbal Plants using YOLOv5 on Jetson Nano
Object detection has been evolving greatly in recent years and the advancements in hardware and software technologies have made it possible to perform object detection with ease. Due to the enhanced capabilities of the modern processors and Graphics Processing Unit (GPU) of doing an exponentially complex and extensive number of iterations in very less time. Real-time object detection has become highly popular and the center of attention in recent years because most of the hardware owned by common users is powerful enough to compute that which unlocks whole new possibilities for implementing real-time object detection in numerous applications in various domains. Real-time herbal plant detection is one such topic that has many applications in the field of ayurvedic medicines and many other pharmaceutical applications that can be used to spike the efficiency in identifying these herbal plants that can be used as a precaution and even as a cure for numerous health problems. There are many existing algorithms for real-time detection, but the evolution of new Artificial Neural Network (ANN) and Machine Learning (ML) techniques unlocks new ways to implement recent and advanced algorithms to apply for real-time detection of such powdered microscopic images to achieve better performance in various aspects compared to already existing methods. Our model is trained for detecting three types of microscopic herbal plants.
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