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Rotation variant object detection in Deep Learning

机译:深度学习中的旋转变量对象检测

摘要

System and method for detecting objects in geospatial images, 3D point clouds and Digital Surface Models (DSMs). Deep Convolution Neural Networks (DCNNs) are trained using positive and negative training examples. Using a rotation pattern match of only positive examples reduces the number of negative examples required. In DCNNs softmax probability is variant of rotation angles. When rotation angle is coincident with object orientation, softmax probability has maximum value. During training, positive examples are rotated so that their orientation angles are zero. During detection, test images are rotated through different angles. At each angle, softmax probability is computed. A final object detection is based on maximum softmax probability as well as a pattern match between softmax probability patterns of all positive examples and the softmax probability pattern of a target object at different rotation angles. The object orientation is determined at the rotation angle when softmax probability has maximum value.
机译:用于检测地理空间图像,3D点云和数字表面模型(DSM)中的对象的系统和方法。深度卷积神经网络(DCNN)使用正面和负面训练示例进行训练。仅使用正例的旋转模式匹配会减少所需的负例的数量。在DCNN中,softmax概率是旋转角度的变体。当旋转角度与物体方向一致时,softmax概率具有最大值。在训练过程中,旋转积极的榜样,使他们的取向角为零。在检测期间,测试图像旋转不同角度。在每个角度,都会计算softmax概率。最终物体检测基于最大softmax概率以及所有正例的softmax概率模式与目标物体在不同旋转角度下的softmax概率模式之间的模式匹配。当softmax概率具有最大值时,以旋转角度确定对象方向。

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