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Connectionist model for object recognition

机译:对象识别的连接模型

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An application of neural networks is the recognition of objects under translation, rotation, and scale change. Most existing networks for invariant object recognition require a huge number of connections and/or processing units. In this paper, we propose a new connectionist model for invariant object recognition for binary images with a reasonable network size. The network consists of five stages. The first stage shifts the object so that the centroid of the object coincides with the center of the image plane. The second stage is a variation of the polar-coordinate transformation used to obtain two N- dimensional representations of the input object. In this stage, the θ axis is represented by the positions of the output units; therefore, any rotation of the original object becomes a cyclic shift of the output values of this stage. The third stage is a variation of the Rapid transform, which provides invariant representations of cyclic-shift inputs. The next stage normalizes the outputs of the Rapid transform to obtain scale invariance. The final stage is a nearest neighbor classifier. We tested the performance of the network for character recognition and good results were obtained with only one pattern per class in training.
机译:神经网络的应用是在翻译,旋转和缩放变化下的对象的识别。大多数用于不变对象识别的网络需要大量的连接和/或处理单元。在本文中,我们提出了一种新的连接型模型,用于具有合理网络大小的二进制图像的不变性对象识别。网络由五个阶段组成。第一阶段移动物体使物体的质心与图像平面的中心一致。第二阶段是用于获得输入对象的两个n维表示的偏振坐标变换的变化。在该阶段,θ轴由输出单元的位置表示;因此,原始对象的任何旋转变为该阶段的输出值的循环移位。第三阶段是快速变换的变化,它提供了循环移位输入的不变表示。下一阶段将快速变换的输出标准化以获得尺度不变性。最终阶段是最近的邻居分类器。我们测试了网络的性能进行字符识别,并且在训练中只有一个图案获得了良好的结果。

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