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Target recognition algorithm for urban management cases by mobile devices based on MobileNet
YANG Huihua, ZHANG Tianyu, LI Lingqiao, PAN Xipeng
Journal of Computer Applications    2019, 39 (8): 2475-2479.   DOI: 10.11772/j.issn.1001-9081.2019010232
Abstract543)      PDF (819KB)(301)       Save
For the monitoring dead angles of fixed surveillance cameras installed in large quantities and low hardware performance of mobile devices, an urban management case target recognition algorithm that can run on IOS mobile devices with low performance was proposed. Firstly, the number of channels of input and output images and the number of feature maps generated by each channel were optimized by adding new hyperparameters to MobileNet. Secondly, a new recognition algorithm was formed by combining the improved MobileNet with the SSD recognition framework and was transplanted to the IOS mobile devices. Finally, the accurate detection of the common 8 specific urban management case targets was achieved by the proposed algorithm, in which the camera provided by the mobile device was used to capture the scene video. The mean Average Precision (mAP) of the proposed algorithm was 15.5 percentage points and 10.4 percentage points higher than that of the prototype YOLO and the prototype SSD, respectively. Experimental results show that the proposed algorithm can run smoothly on low-performance IOS mobile devices, reduce the dead angles of monitoring, and provide technical support for urban management team to speed up the classification and processing of cases.
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K-means clustering algorithm based on adaptive cuckoo search and its application
YANG Huihua, WANG Ke, LI Lingqiao, WEI Wen, HE Shengtao
Journal of Computer Applications    2016, 36 (8): 2066-2070.   DOI: 10.11772/j.issn.1001-9081.2016.08.2066
Abstract617)      PDF (803KB)(609)       Save
The original K-means clustering algorithm is seriously affected by initial centroids of clustering and easy to fall into local optima. To solve this problem, an improved K-means clustering algorithm based on Adaptive Cuckoo Search (ACS), namely ACS-K-means, was proposed, in which the search step of cuckoo was adjusted adaptively so as to improve the quality of solution and boost speed of convergence. The performance of ACS-K-means clustering was firstly evaluated on UCI dataset, and the results demonstrated that it surpassed K-means, GA-K-means (K-means based on Genetic Algorithm), CS-K-means (K-means based on Cuckoo Search) and PSO-K-means (K-means based on Particle Swarm Optimization) in clustering quality and convergence rate. Finally, the ACS-K-means clustering algorithm was applied to the development of heat map of urban management cases of Qingxiu district of Nanning city, the results also showed that the proposed method had better quality of clustering and faster speed of convergence.
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Multiple samples alignment for GC-MS data in parallel on Sector/Sphere
YANG Huihua REN Hongjun LI Lingqiao DUAN Lixin GUO Tuo DU Lingling QI Xiaoquan
Journal of Computer Applications    2013, 33 (01): 215-218.   DOI: 10.3724/SP.J.1087.2013.00215
Abstract874)      PDF (616KB)(613)       Save
To deal with the problem that the process of Gas Chromatography-Mass Spectrography (GC-MS) data is complex and time consuming which delays the whole experimental progress, taking the alignment of multiple samples as an example, a parallel framework for processing GC-MS data on Sector/Sphere was proposed, and an algorithm of aligning multiple samples in parallel was implemented. First, the similarity matrix of all the samples was computed, then the sample set was divided into small sample sets according to hierarchical clustering and samples in each set were aligned respectively, finally the results of each set were merged according to the average sample of the set. The experimental results show that the error rate of the parallel alignment algorithm is 2.9% and the speedup ratio reaches 3.29 using the cluster with 4 PC, which can speed up the process at a high accuracy, and handle the problem that the processing time is too long.
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