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Pancreas Segmentation Optimization Based on Coarse-to-Fine Scheme
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作者 Xu Yao Chengjian Qiu +1 位作者 Yuqing Song Zhe Liu 《Intelligent Automation & Soft Computing》 SCIE 2023年第9期2583-2594,共12页
As the pancreas only occupies a small region in the whole abdominal computed tomography(CT)scans and has high variability in shape,location and size,deep neural networks in automatic pancreas segmentation task can be ... As the pancreas only occupies a small region in the whole abdominal computed tomography(CT)scans and has high variability in shape,location and size,deep neural networks in automatic pancreas segmentation task can be easily confused by the complex and variable background.To alleviate these issues,this paper proposes a novel pancreas segmentation optimization based on the coarse-to-fine structure,in which the coarse stage is responsible for increasing the proportion of the target region in the input image through the minimum bounding box,and the fine is for improving the accuracy of pancreas segmentation by enhancing the data diversity and by introducing a new segmentation model,and reducing the running time by adding a total weights constraint.This optimization is evaluated on the public pancreas segmentation dataset and achieves 87.87%average Dice-Sørensen coefficient(DSC)accuracy,which is 0.94%higher than 86.93%,result of the state-of-the-art pancreas segmentation methods.Moreover,this method has strong generalization that it can be easily applied to other coarse-to-fine or one step organ segmentation tasks. 展开更多
关键词 Pancreas segmentation coarse-to-fine U-net constraint loss function
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Multi-pyramid image spatial structure based on coarse-to-fine pyramid and scale space
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作者 Jiucheng Xu Nan Wang Yuyao Wang 《CAAI Transactions on Intelligence Technology》 2018年第4期228-234,共7页
Coarse-to-fine pyramid and scale space are two important image structures in the realm of image matching.However,the advantage of coarse-to-fine pyramid is neglected as the pyramid structure is usually constructed wit... Coarse-to-fine pyramid and scale space are two important image structures in the realm of image matching.However,the advantage of coarse-to-fine pyramid is neglected as the pyramid structure is usually constructed with the down sampling method in scale space.In addition,the importance of each lattice is different for one single image.Based on the analyses above,the new multi-pyramid(M-P)image spatial structure is constructed.First,coarse-to-fine pyramid is constructed by partitioning the original image into increasingly finer lattices,and the number of interest points is also adopted to be each lattice’s non-normalized weight on each pyramid level.Second,the scale space of each lattice on each pyramid level is generated with the classic Gaussian kernel.Third,the descriptors of each lattice are generated by regarding the stability of scale space as the description of image.Moreover,the parallel version of M-P algorithm is also presented to accelerate the speed of computation.Finally,the comprehensive experimental results reveal that our multi-pyramid structure which is constructed by the combination of coarse-to-fine spatial pyramid and scale space can generate more effective features,compared with the other related methods. 展开更多
关键词 coarse-to-fine PYRAMID
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基于Coarse-to-fine注意力机制的指针式仪表读数识别
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作者 王进 简丽娜 +3 位作者 孙涛 李磊 邱昌龙 王柳 《工业控制计算机》 2022年第12期1-3,6,共4页
为了解决变电站指针式仪表读数识别过程中所涉及到待检测目标尺度分布范围广泛,而导致特征金字塔在不同尺度上不一致性的问题,提出一种基于注意力机制的特征融合的改进的YOLOv3算法。通过利用注意力机制自动调整各尺度特征映射融合的空... 为了解决变电站指针式仪表读数识别过程中所涉及到待检测目标尺度分布范围广泛,而导致特征金字塔在不同尺度上不一致性的问题,提出一种基于注意力机制的特征融合的改进的YOLOv3算法。通过利用注意力机制自动调整各尺度特征映射融合的空间权重,该模块包括两步:同比例放缩和基于注意力机制的特征融合。采用改进后的YOLOv3算法检测图片中仪表的表盘位置,然后根据Coarse-to-fine的思想,使用Mask R-CNN对表盘指针采取实例分割操作,并使用简单线性回归对仪表中的指针进行线性拟合,计算出指针斜率,最终计算仪表读数。实验结果表明,改进后的YOLOv3算法对指针式仪表的识别精度达到了91.85%,对小目标检测效果有较高的提升,使模型具有更好的鲁棒性。同时,实例分割算法与线性回归模型的结合也为指针式仪表读数的自动识别提供了新思路。 展开更多
关键词 指针式仪表 YOLOv3 注意力机制 特征融合 coarse-to-fine
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Minimal Generalized Time-Bandwidth Product Method for Estimating the Optimum Fractional Fourier Order
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作者 Lin Tian Zhenming Peng 《Journal of Computer and Communications》 2015年第3期8-12,共5页
A minimal generalized time-bandwidth product-based coarse-to-fine strategy is proposed with one novel ideas highlighted: adopting a coarse-to-fine strategy to speed up the searching process. The simulation results on ... A minimal generalized time-bandwidth product-based coarse-to-fine strategy is proposed with one novel ideas highlighted: adopting a coarse-to-fine strategy to speed up the searching process. The simulation results on synthetic and real signals show the validity of the proposed method. 展开更多
关键词 GENERALIZED Time-Bandwidth Product coarse-to-fine Strategy OPTIMUM FRACTIONAL FOURIER Order FRACTIONAL FOURIER Transform
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Speed-up Multi-modal Near Duplicate Image Detection
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作者 Chunlei Yang Jinye Peng Jianping Fan 《Open Journal of Applied Sciences》 2013年第1期16-21,共6页
Near-duplicate image detection is a necessary operation to refine image search results for efficient user exploration. The existences of large amounts of near duplicates require fast and accurate automatic near-duplic... Near-duplicate image detection is a necessary operation to refine image search results for efficient user exploration. The existences of large amounts of near duplicates require fast and accurate automatic near-duplicate detection methods. We have designed a coarse-to-fine near duplicate detection framework to speed-up the process and a multi-modal integra-tion scheme for accurate detection. The duplicate pairs are detected with both global feature (partition based color his-togram) and local feature (CPAM and SIFT Bag-of-Word model). The experiment results on large scale data set proved the effectiveness of the proposed design. 展开更多
关键词 Near-Duplicate Detection coarse-to-fine Framework MULTI-MODAL FEATURE Integration
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Face image retrieval based on shape and texture feature fusion 被引量:2
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作者 Zongguang Lu Jing Yang Qingshan Liu 《Computational Visual Media》 CSCD 2017年第4期359-368,共10页
Humongous amounts of data bring various challenges to face image retrieval. This paper proposes an efficient method to solve those problems. Firstly,we use accurate facial landmark locations as shape features. Secondl... Humongous amounts of data bring various challenges to face image retrieval. This paper proposes an efficient method to solve those problems. Firstly,we use accurate facial landmark locations as shape features. Secondly, we utilise shape priors to provide discriminative texture features for convolutional neural networks. These shape and texture features are fused to make the learned representation more robust.Finally, in order to increase efficiency, a coarse-tofine search mechanism is exploited to efficiently find similar objects. Extensive experiments on the CASIAWeb Face, MSRA-CFW, and LFW datasets illustrate the superiority of our method. 展开更多
关键词 face retrieval convolutional neural networks(CNNs) coarse-to-fine
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Blind Spot Obstacle Detection from Monocular Camera Images with Depth Cues Extracted by CNN 被引量:1
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作者 Yuxiang Guo Itsuo Kumazawa Chuyo Kaku 《Automotive Innovation》 EI 2018年第4期362-373,共12页
The images from a monocular camera can be processed to detect depth information regarding obstacles in the blind spot area captured by the side-view camera of a vehicle.The depth information is given as a classificati... The images from a monocular camera can be processed to detect depth information regarding obstacles in the blind spot area captured by the side-view camera of a vehicle.The depth information is given as a classification result“near”or“far”when two blocks in the image are compared with respect to their distances and the depth information can be used for the purpose of blind spot area detection.In this paper,the proposed depth information is inferred from a combination of blur cues and texture cues.The depth information is estimated by comparing the features of two image blocks selected within a single image.A preliminary experiment demonstrates that a convolutional neural network(CNN)model trained by deep learning with a set of relatively ideal images achieves good accuracy.The same CNN model is applied to distinguish near and far obstacles according to a specified threshold in the vehicle blind spot area,and the promising results are obtained.The proposed method uses a standard blind spot camera and can improve safety without other additional sensing devices.Thus,the proposed approach has the potential to be applied in vehicular applications for the detection of objects in the driver’s blind spot. 展开更多
关键词 coarse-to-fine analysis Convolutional neural network Blind spot detection Principal component analysis Discrete cosine transformation
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Two-dimensional entropy model for video shot partitioning 被引量:1
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作者 ZHU SongHao LIU YunCai 《Science in China(Series F)》 2009年第2期183-194,共12页
A shot presents a contiguous action recorded by an uninterrupted camera operation and frames within a shot keep spatio-temporal coherence. Segmenting a serial video stream file into meaningful shots is the first pass ... A shot presents a contiguous action recorded by an uninterrupted camera operation and frames within a shot keep spatio-temporal coherence. Segmenting a serial video stream file into meaningful shots is the first pass for the task of video analysis, content-based video understanding. In this paper, a novel scheme based on improved two-dimensional entropy is proposed to complete the partition of video shots. Firstly, shot transition candidates are detected using a two-pass algorithm: a coarse searching pass and a fine searching pass. Secondly, with the character of two-dimensional entropy of the image, correctly detected transition candidates are further classified into different transition types whereas those falsely detected shot breaks are distinguished and removed. Finally, the boundary of gradual transition can be precisely located by merging the characters of two-dimensional entropy of the image into the gradual transition. A large number of video sequences are used to test our system performance and promising results are obtained. 展开更多
关键词 video shot segmentation two-dimensional entropy model coarse-to-fine algorithm content-based indexing and retrieval
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