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[9003002.] كود البحث : | 9003002 - 2019/07/07 |
Current Status: | Submitted |
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Representation Learning Framework of Object Recognition via Feature Construction / |
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Mansoura journal for computer and information sciences / / Vol.14 - No.1 |
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Muhammad H. Zayyan - مؤلف رئيسي |
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Samir Elmougy |
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Mohammed F. AlRahmawy |
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Object recognition, ECO features, Adaboost, Random Forest, Pooling, Genetic Algorithm. |
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In this paper, we recognize objects within images by collecting information from a large number of random-size patches of the image. The different backgrounds accompany the foreground object demand to have a learning system to identify each patch as belonging to the object category or to the background category. We strengthen a recent method called Evolution-COnstructed (ECO), which is based on the ensemble learning approach which combines several weak classifier. The improvement is relying on decreasing the overfitting problem. Two different improving ideas are proposed: 1) Pooling operation, which is applied to the weak classifiers data, 2) Random Forest algorithm, which combines the weak classifiers outcomes. Experimental results are reported for classification of 9 categories of Caltech-101 data sets and proved that our modifications boost the performance over the base method and other existing methods. |