首页> 外国专利> Learning method and learning device for object detector based on reconfigurable network for optimizing customers' requirements such as key performance index using target object estimating network and target object merging network, and testing method and testing device using the same

Learning method and learning device for object detector based on reconfigurable network for optimizing customers' requirements such as key performance index using target object estimating network and target object merging network, and testing method and testing device using the same

机译:基于可重构网络的目标检测器的学习方法和学习设备,用于利用目标对象估计网络和目标对象合并网络优化客户的关键性能指标等要求,以及使用该方法的测试方法和测试设备

摘要

A method for learning parameters of an object detector based on a CNN adaptable to customer's requirements such as KPI by using a target object estimating network and a target object merging network is provided. The CNN can be redesigned when scales of objects change as a focal length or a resolution changes depending on the KPI. The method includes steps of: a learning device instructing convolutional layers to generate a k-th feature map by applying convolution operations to a k-th manipulated image which corresponds to the (k−1)-th target region on an image; and instructing the target object merging network to merge a first to an n-th object detection information, outputted from an FC layer, and backpropagating losses generated by referring to merged object detection information and its corresponding GT. The method can be useful for multi-camera, SVM (surround view monitor), and the like, as accuracy of 2D bounding boxes improves.
机译:提供了一种通过使用目标物体估计网络和目标物体合并网络,基于适用于诸如KPI的客户需求的CNN来学习物体检测器的参数的方法。当对象的比例随着焦距或分辨率的变化取决于KPI时,可以重新设计CNN。该方法包括以下步骤:学习设备通过将卷积运算应用于与图像上的第(k-1)个目标区域相对应的第k个操纵图像来指示卷积层生成第k个特征图;以及指示目标对象合并网络将FC层输出的第一至第n对象检测信息进行合并,并参考合并后的对象检测信息及其对应的GT进行反向传播损失。随着2D边界框的准确性提高,该方法可用于多摄像机,SVM(全景监视器)等。

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