Affiliation:
1. Ordos Vocational College, Ordos 017020, Inner Mongolia, China
2. Peking University, Beijing 100871, China
Abstract
The original target tracking algorithm based on a single model has long been unable to meet the complex and changeable characteristics of the target, and then there are problems such as poor tracking accuracy, target loss, and model mismatch. The interactive multimodel algorithm uses multiple motion models to track the target, obtains the degree of adaptation between the actual motion state of the target and each model according to the calculated likelihood function, and then combines the updated weight values of each filter to obtain a weighted sum. Therefore, the interactive multimodel algorithm can achieve better performance. This paper proposes an improved interactive multimodel algorithm that can achieve player tracking and trajectory feature matching. First, this paper proposes an improved Kalman filtering (IKF) algorithm. This method is developed from the unbiased conversion measurement Kalman filter, which can obtain more accurate target state and covariance estimation. Secondly, using the parallel processing mode of the IMM algorithm to efficiently solve the data association between multiple filters, the IMM-IKF model is proposed. Finally, in order to solve the problem of low computational efficiency and high mismatch rate in image feature point matching, a method of introducing a minimum spanning tree in two-view matching is proposed. Experimental results show that the improved IMM-IKF algorithm can quickly respond to changes in the target state and can find the matching path with the lowest matching cost. In the case of ensuring the matching accuracy, the real-time performance of image matching is ensured.
Subject
Multidisciplinary,General Computer Science
Reference40 articles.
1. Online multi-target tracking with tensor-based high-order graph matching;Z. Zhou
2. Multi-target tracking by on-line learned discriminative appearance models;C. H. Kuo
3. Multiple target tracking by learning-based hierarchical association of detection responses;C. Huang;IEEE Transactions on Cpattern Analysis and Machine Intelligence,2012
4. Improving multi-target tracking via social grouping;Z. Qin
5. Uniqueness of weak solutions to a Keller-Segel-Navier-Stokes model
with a logistic source
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