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YOLO-Banana:An Effective Grading Method for Banana Appearance Quality
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作者 Dianhui Mao Xuesen Wang +3 位作者 Yiming Liu Denghui Zhang Jianwei Wu Junhua Chen 《Journal of Beijing Institute of Technology》 EI CAS 2023年第3期363-373,共11页
The increasing trend towards independent fruit packaging demands a high appearance quality of individually packed fruits.In this paper,we propose an improved YOLOv5-based model,YOLO-Banana,to effectively grade banana ... The increasing trend towards independent fruit packaging demands a high appearance quality of individually packed fruits.In this paper,we propose an improved YOLOv5-based model,YOLO-Banana,to effectively grade banana appearance quality based on the number of banana defect points.Due to the minor and dense defects on the surface of bananas,existing detection algorithms have poor detection results and high missing rates.To address this,we propose a densitybased spatial clustering of applications with noise(DBSCAN)and K-means fusion clustering method that utilizes refined anchor points to obtain better initial anchor values,thereby enhancing the network’s recognition accuracy.Moreover,the optimized progressive aggregated network(PANet)enables better multi-level feature fusion.Additionally,the non-maximum suppression function is replaced with a weighted non-maximum suppression(weighted NMS)function based on distance intersection over union(DIoU).Experimental results show that the model’s accuracy is improved by 2.3%compared to the original YOLOv5 network model,thereby effectively grading the banana appearance quality. 展开更多
关键词 YOLOv5 banana appearance grading clustering algorithm weighted non-maximum suppression(weighted NMS) progressive aggregated network(PANet)
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Norm-DP模型行人检测优化算法
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作者 柴恩惠 马占飞 智敏 《计算机科学与探索》 CSCD 北大核心 2021年第3期545-552,共8页
传统深度金字塔模型作为一种有效的行人检测算法备受关注,融合可变形部件模型和卷积神经网络模型,但特征提取部分使用的算法像素区域的大小不同,导致模型之间不能完全融合,在行人数量多、姿势复杂和有遮挡情况时的检测效果不理想。因此... 传统深度金字塔模型作为一种有效的行人检测算法备受关注,融合可变形部件模型和卷积神经网络模型,但特征提取部分使用的算法像素区域的大小不同,导致模型之间不能完全融合,在行人数量多、姿势复杂和有遮挡情况时的检测效果不理想。因此,提出一种基于规范化函数的深度金字塔模型(Norm-DP)算法,使用规范化函数融合可变形部件模型和卷积神经网络模型,直接从金字塔特征中提取正负样本,使用隐变量支持向量机进行模型训练,结合柔性非最大抑制(soft-NMS)算法和边界框回归(BBR)算法对定位框进行优化。分别使用INRIA和MS COCO数据集进行实验验证,在行人数量多、姿势复杂和有遮挡情况时,检测精度高于最优的可变形部件模型算法、卷积神经网络算法、深度金字塔模型算法和结合区域选择的卷积神经网络算法。 展开更多
关键词 卷积神经网络(CNN) 可变形部件模型算法 规范化深度金字塔(Norm-DP) 柔性非最大抑制(soft-NMS) 边界框回归(BBR)
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Accurate Registration of Remote Sensing Images Based on Local Optimal Transformation
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作者 Bo Wang Changqing Li +2 位作者 Shi Tang Zhiqiang Zhou Hong Zhao 《Journal of Beijing Institute of Technology》 EI CAS 2019年第2期371-382,共12页
As the basic work of image stitching and object recognition,image registration played an important part in the image processing field.Much previous work in registration accuracy and realtime performance progressed ver... As the basic work of image stitching and object recognition,image registration played an important part in the image processing field.Much previous work in registration accuracy and realtime performance progressed very slowly,especially in registrating images with line feature.An innovative method for image registration based on lines is proposed,it can effectively improve the accuracy and real-time performance of image registration.The line feature can deal with some registration problems where point feature does not work.Our registration process is divided into two parts.The first part determines the rough registration transformation relation between reference image and test image.Then the similarity degree among different transformation and modified nonmaximum suppression(MNMS)algorithms are obtained,which produce local optimal solution to optimize the rough registration transformation.The final optimal registration relation can be obtained from two registration parts according to the match scores.The experimental results show that the proposed method makes a more accurate registration relation and performs better in real-time situation. 展开更多
关键词 initial REGISTRATION RELATIONSHIP accurate REGISTRATION RELATIONSHIP SIMILARITY DEGREE local optimal TRANSFORMATION modified non-maximum suppression(MNMS)algorithm
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一种遥感图像车辆检测方法 被引量:2
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作者 马志龙 倪佳忠 《北京测绘》 2022年第5期547-551,共5页
针对常用的遥感图像车辆检测方法稳定性和效率较差的问题,本文提出一种改进YOLO-V5遥感图像车辆检测方法。首先,使用群归一化层替换YOLO-V5中的归一化层,消除训练数据大小对模型的影响,降低模型训练对显卡显存的需求,增加模型收敛速度;... 针对常用的遥感图像车辆检测方法稳定性和效率较差的问题,本文提出一种改进YOLO-V5遥感图像车辆检测方法。首先,使用群归一化层替换YOLO-V5中的归一化层,消除训练数据大小对模型的影响,降低模型训练对显卡显存的需求,增加模型收敛速度;然后,使软非极大值抑制算法选择车辆目标锚框,可更精确地定位车辆,防止因遮挡漏检车辆。由实验可知:相比原YOLO-V5模型的各类别平均精确度提高了1.53%,帧率提高0.83,表明所提方法稳定性更好、检测效率更高,可应用于遥感图像汽车检测领域。 展开更多
关键词 遥感图像车辆目标检测 YOLO-V5模型 群归一化层 软非极大值抑制算法
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基于深度学习的OBD端口占用状态自动识别算法 被引量:1
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作者 苏东 余宁梅 《北京邮电大学学报》 EI CAS CSCD 北大核心 2019年第6期49-57,共9页
针对光分路器(OBD)端口占用状态不能自动采集的问题,提出了一种改进型YOLOv3算法.增加第4个上采样特征图,提升高分辨率下密集小物体检测敏感度;针对端口固定高宽比特征,利用k-means聚类算法重新确定目标候选框个数和高宽比;提出软非极... 针对光分路器(OBD)端口占用状态不能自动采集的问题,提出了一种改进型YOLOv3算法.增加第4个上采样特征图,提升高分辨率下密集小物体检测敏感度;针对端口固定高宽比特征,利用k-means聚类算法重新确定目标候选框个数和高宽比;提出软非极大值抑制算法,缓解端口靠近且被遮挡情况下引起的漏检、误检;针对4种疑难生产场景下的端口占用状态完成检测.实验结果表明,改进后的YOLOv3准确率达90.12%,相比原YOLOv3提升了5.17%.改进后的算法对于端口类物体具有更高的检测准确率. 展开更多
关键词 光分路器 YOLOv3 聚类算法 软非极大值抑制 特征图
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