Incremental Machine Learning Approach for Component-based Recognition

H. E. Osman
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Abstract

This study proposes an on-line machine learning approach for object recognition, where new images are continuously added and the recognition decision is made without delay. Random forest (RF) classifier has been extensively used as a generative model for classification and regression applications. We extend this technique for the task of building incremental component-based detector. First we employ object descriptor model based on bag of covariance matrices, to represent an object region then run our on-line RF learner to select object descriptors and to learn an object classifier. Experiments of the object recognition are provided to verify the effectiveness of the proposed approach. Results demonstrate that the propose model yields in object recognition performance comparable to the benchmark standard RF, AdaBoost, and SVM classifiers.
基于组件识别的增量机器学习方法
本研究提出了一种用于物体识别的在线机器学习方法,其中不断添加新图像并且不延迟地做出识别决策。随机森林分类器作为一种生成模型被广泛应用于分类和回归领域。我们将此技术扩展到构建基于增量组件的检测器的任务。首先,我们采用基于协方差矩阵袋的目标描述符模型来表示目标区域,然后运行在线RF学习器来选择目标描述符并学习目标分类器。通过目标识别实验验证了该方法的有效性。结果表明,该模型的目标识别性能可与基准标准RF、AdaBoost和SVM分类器相媲美。
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