Huihui Yu, Daoliang Li, Yingyi Chen
School of Information Science & Technology, Beijing Forestry University, Beijing, 100083, PR China.
National Innovation Center for Digital Fishery, Beijing, 100083, PR China.
Heliyon. 2023 Jun 19;9(6):e17332. doi: 10.1016/j.heliyon.2023.e17332. eCollection 2023 Jun.
Image motion deblurring is a crucial technology in computer vision that has gained significant attention attracted by its outstanding ability for accurate acquisition of motion image information, processing and intelligent decision making, etc. Motion blur has recently been considered as one of the major challenges for applications of computer vision in precision agriculture. Motion blurred images seriously affect the accuracy of information acquisition in precision agriculture scene image such as testing, tracking, and behavior analysis of animals, recognition of plant phenotype, critical characteristics of pests and diseases, etc. On the other hand, the fast motion and irregular deformation of agriculture livings, and motion of image capture device all introduce great challenges for image motion deblurring. Hence, the demand of more efficient image motion deblurring method is rapidly increasing and developing in the applications with dynamic scene. Up till now, some studies have been carried out to address this challenge, e.g., spatial motion blur, multi-scale blur and other types of blur. This paper starts with categorization of causes of image blur in precision agriculture. Then, it gives detail introduction of general-purpose motion deblurring methods and their the strengthen and weakness. Furthermore, these methods are compared for the specific applications in precision agriculture e.g., detection and tracking of livestock animal, harvest sorting and grading, and plant disease detection and phenotyping identification etc. Finally, future research directions are discussed to push forward the research and application of advancing in precision agriculture image motion deblurring field.
图像运动去模糊是计算机视觉中的一项关键技术,因其在精确获取运动图像信息、处理及智能决策等方面的卓越能力而备受关注。运动模糊最近被视为计算机视觉在精准农业应用中的主要挑战之一。运动模糊图像严重影响精准农业场景图像中信息获取的准确性,如动物的测试、跟踪和行为分析、植物表型识别、病虫害关键特征识别等。另一方面,农业生物的快速运动和不规则变形以及图像采集设备的运动都给图像运动去模糊带来了巨大挑战。因此,在动态场景应用中,对更高效的图像运动去模糊方法的需求正在迅速增长和发展。到目前为止,已经开展了一些研究来应对这一挑战,例如空间运动模糊、多尺度模糊和其他类型的模糊。本文首先对精准农业中图像模糊的原因进行分类。然后,详细介绍通用的运动去模糊方法及其优缺点。此外,还针对这些方法在精准农业中的具体应用进行了比较,如家畜检测与跟踪、收获分拣与分级以及植物病害检测与表型鉴定等。最后,讨论了未来的研究方向,以推动精准农业图像运动去模糊领域的研究与应用发展。