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Multiclass object detection system in imaging sensor network using Haar-like features and Joint-Boosting algorithm

机译:利用类Haar特征和联合增强算法的成像传感器网络多目标检测系统

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This paper proposes an efficient scheme for detecting different object classes in an imaging sensor network. The object detection system detects all the instances of objects (for which the classifier was trained) in the given image, regardless of their scales and locations. Therefore, the image can be thus seen as a set of sub-windows that are to be evaluated by the detector. The detector selects those sub-windows that contain the instances of the objects trained. The traditional approach for multiclass object detection is to use different independent classifiers to the image, at multiple locations and scales. This can be slow and requires a lot of training data. To achieve a fast and robust implementation, shared features are used. In the existing schemes, part-based models have been used for evaluating the object features, so these features being more class-specific cannot share more information among different classes. Hence in this paper, rectangular features called Haar-like features which are more generic is used and thus more number of features can be shared. The proposed scheme uses Joint-Boosting algorithm for training the multiclass object classifier. The benefits of illumination normalisation or variance normalisation technique used to neutralise the effect of changing lighting conditions are explored. Though the proposed scheme is validated for car and pedestrian classes, the training and detection techniques used in this scheme can be generalised for any object class.
机译:本文提出了一种用于检测成像传感器网络中不同对象类别的有效方案。物体检测系统在给定图像中检测物体的所有实例(针对其进行分类器训练),而不管其比例和位置如何。因此,图像因此可以看作是检测器要评估的一组子窗口。检测器选择那些包含受训练对象实例的子窗口。用于多类对象检测的传统方法是在多个位置和多个比例下对图像使用不同的独立分类器。这可能很慢,并且需要大量的训练数据。为了实现快速而强大的实现,使用了共享功能。在现有方案中,基于零件的模型已用于评估对象特征,因此这些特定于类的特征无法在不同类之间共享更多信息。因此,在本文中,使用了更通用的称为Haar状特征的矩形特征,因此可以共享更多特征。所提出的方案使用联合提升算法来训练多类对象分类器。探索了用于抵消照明条件变化影响的照明归一化或方差归一化技术的好处。尽管所提出的方案已针对汽车和行人类别进行了验证,但该方案中使用的训练和检测技术可以推广到任何对象类别。

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