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Provable Translational Robustness For Object Detection With Convolutional Neural Networks

机译:用卷积神经网络提供对象检测的可提供平移鲁棒性

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In the following work object detection approaches with Convolutional Neural Networks (CNNs), which have provable characteristics regarding translational robustness, are proposed, evaluated in an application scenario, and compared to state of the art approaches. The provable characteristics are achieved by transferring theoretical results from wavelet theory and scattering networks to common CNNs used for classification. Therefore first a CNN is modeled as a scattering network. Needed parameters are estimated with data relevant for application scenarios. With the obtained information first the best feature extractor for a given application scenario is chosen. Afterward, the theory is extended to cover object detection networks. The proposed approaches are trained on simulated and real datasets and evaluated on real datasets.
机译:在下面的工作对象中,提出了具有卷积神经网络(CNNS)的方法,该方法具有可提供关于平移鲁棒性的可提供特性,在应用场景中评估,与现有技术的状态进行评估。 通过将小波理论和散射网络转移到用于分类的普通CNN来实现可提供的特征。 因此,首先,CNN被建模为散射网络。 使用与应用程序方案相关的数据估计所需的参数。 利用所获得的信息首先,选择用于给定应用方案的最佳特征提取器。 之后,该理论扩展到涵盖对象检测网络。 所提出的方法在模拟和真实数据集上培训并在实际数据集上进行评估。

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