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2 نتائج ل "support vector machine classifler"
صنف حسب:
Automatic target recognition of synthetic aperture radar (SAR) images based on optimal selection of Zernike moments features
In the present study, a new algorithm for automatic target detection (ATR) in synthetic aperture radar (SAR) images has been proposed. First, moving and stationary target acquisition and recognition image chips have been segmented and then passed to a number of preprocessing stages such as histogram equalisation, position and size normalisation. Second, the feature extraction based on Zernike moments (ZMs) having linear transformation invariance properties and robustness in the presence of the noise has been introduced for the first time. Third, a genetic algorithm-based feature selection and a support vector machine classifier have been presented to select the optimal feature subset of ZMs for decreasing the computational complexity. Experimental results demonstrate the efficiency of the proposed approach in target recognition of SAR imagery. The authors obtained results show that just a small amount of ZMs features is sufficient to achieve the recognition rates that rival other established methods, and so ZMs features can be regarded as a powerful discriminatory feature for automatic target recognition applications relevant to SAR imagery. Furthermore, it can be observed that the classifier performs fairly well until the signal-to-noise ratio falls beneath 5 dB for noisy images.
Multiple pedestrians tracking algorithm by incorporating histogram of oriented gradient detections
The authors propose an effective algorithm for multiple pedestrians tracking, which is constructed in the framework of particle filtering, and it is based on the combination of online boosting tracker and the histogram of oriented gradient (HOG) descriptor for human detection. The combination for the detector and tracker lies on following aspects. First, each detection result is associated to a tracker implemented by the online boosting, which gives the authors scheme robustness for multiple similar objects and then, the output of support vector machine classifier based on HOG is dynamically fused as a component in the observation metric in particle filtering, which makes the tracker more accurate in some difficult conditions. Finally, the states of some particles are replaced by the state given by the detector, so that the tracker can recover from failure quickly. Experiments show the effectiveness of their scheme.