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Informative and Compressed Features for Aircraft Detection in Object Recognition System

机译:目标识别系统中飞机检测的信息和压缩特征

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It is a challenging task to build efficient and robust model for aircraft detection. In our object recognition system, aircraft detection is a main task, which faces various problems, such as blur, occlusion, and shape variation and so on. Existing approaches always require a set of complex classification model and a large number of training samples, which is inefficient and costly. In order to deal with these problems, we employ location based informative features to reduce the complexity of training data. With the employment of location based informative features, simple classifiers will manifest high performance instead of complex classifier which requires more complicated strategy for training. Further, our system needs to update the model frequently which is similar to online learning method, in order to reducing computational complexity, a very sparse measurement matrix is applied to extract features from feature space. The construction of this sparse matrix is based on the theory of sparse representation and compressed sensing. From the experimental results, the detection rate and cost of our proposed method is better than other traditional method.
机译:建立有效且稳健的飞机检测模型是一项艰巨的任务。在我们的物体识别系统中,飞机检测是一项主要任务,它面临各种问题,例如模糊,遮挡和形状变化等。现有的方法总是需要一套复杂的分类模型和大量的训练样本,这效率低下且成本高昂。为了解决这些问题,我们采用了基于位置的信息功能来减少训练数据的复杂性。通过使用基于位置的信息功能,简单的分类器将显示出高性能,而不是复杂的分类器,后者需要更复杂的训练策略。此外,我们的系统需要频繁地更新模型,这类似于在线学习方法,为了降低计算复杂度,非常稀疏的测量矩阵被应用于从特征空间中提取特征。该稀疏矩阵的构建基于稀疏表示和压缩感测的理论。从实验结果来看,我们提出的方法的检测率和成本要优于其他传统方法。

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