基于MSA特征的遥感图像多目标关联算法
A MSA Feature-based Multiple Targets Association Algorithm in Remote Sensing Images
- 2008年第4期 页码:586-592
纸质出版日期: 2008
DOI: 10.11834/jrs.20080477
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纸质出版日期: 2008 ,
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[1]雷琳,蔡红苹,唐涛,粟毅.基于MSA特征的遥感图像多目标关联算法[J].遥感学报,2008(04):586-592.
LEI Lin, CAI Hong-ping, TANG Tao, et al. A MSA Feature-based Multiple Targets Association Algorithm in Remote Sensing Images[J]. Journal of Remote Sensing, 2008,(4):586-592.
遥感图像中多目标关联存在以下两个问题:一是低时间分辨率观测使得目标状态信息无法准确估计
基于Kalm an滤波的多目标关联算法不再适用;二是基于图像特征的目标关联算法又无法处理大场景观测中多个目标关联引起的模糊性。针对上述问题
提出一种基于多尺度自卷积特征匹配和关联代价矩阵最优化的多目标关联算法。实验表明该算法对遥感图像中多目标关联问题具有一定的适用性。
Target identification fusion based on multi-source remote sensing images can make full use of the redundancy and complementary information from all sensors
acquiring more accurate result of target recognition.One of the pre-condition of identification fusion is target association
which is to determine if the information from two or more images are related to the same target and should be fused together.Due to different performance of sensor and diverse target distribution
the extracted information of targets generally has some uncertainty
which results in the difficulty in judging whether the information from two images is originated from the same target.Therefore
how to utilize the information of remote sensing images to distinguish multi-target association has become an urgen problem.There are two kinds of methods concerning target association when using image data: one is Kalman filtering based data association and tracking
which utilizes accumulated kinematic information of multi-frame images to estimate and track.Typical methods are Nearest Neighbor(NN)
Joint Probabilistic Data Association(JPDA)
Multiple-Hypothesis Tracking(MHT) and so on.These methods need dense sampling of observed data
and the target motion model should be simple.The other one uses image match in computer vision for reference.Typical methods are cross correlation matching
feature matching and so on.These methods usually work on condition that only single target is concerned.For remote sensing images
there are two problems when associating multiple targets in them.Firstly
it is incapable to acquire a series of multi-temporal remote sensing images on the same region at present
so the kinematic state of a target cannot be estimated accurately with low temporal resolution data and the classical Kalman filtering association algorithms are no more applicable.We must seek for other time-independent information as the associating measurement
which can be image invariant feature.Secondly
there are two uncertainties lying in image feature extraction of a target.One uncertainty lies in determining invariant features due to various image distortions such as rotation
scaling and so on.The other lies in establishing feature correspondences between any two consecutive images.So
it is difficult to discriminate the ambiguity of multiple targets’ correspondences when using image matching-based association method.In order to solve above problems
a novel multiple targets association method based on image invariant feature matching and Association Cost Matrix(ACM) global optimization is proposed.At first
the Multi-scale Autoconvolution(MSA) transform of a target is computed based on affine invariant theory and is used as association measurement
which can overcome the negative influence of changes in target’s pose
imaging viewpoint and so on.Secondly
the association cost matrix is constructed based on the dissimilarities of MSA feature matching of any two target pairs from two images respectively
representing the correspondence illegibility of two targets.Finally
the minimal energy of ACM is found using simulated annealing(SA) algorithm
and the global optimal association result is achieved.From the simulation experiments
some conclusions can be drawn as follows:(1) Using image invariant features to perform target association is a validate way
overcoming the bottleneck that the time-dependent kinematic feature cannot be estimated from sparse remote sensing image series.(2) Compared with the NN local algorithm
the optimization of association cost matrix is a global optimal algorithm and has excellent performance in dense targets circumstance.(3)The approximate algorithms such as SA can greatly improve the search of optimal association cost matrix
and then make complex association method practicable.
遥感图像目标关联多尺度自卷积关联代价矩阵
remote sensing imagetarget associationmulti-scale autoconvolutionassociation cost matrix
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