在选择性调优模型上使用MLP进行对象分类

V. Cantoni, R. Marmo
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摘要

研究人员认为,执行许多视觉任务需要一种注意力机制。本文提出了一种基于多层感知器神经网络的目标分类方法,该方法基于选择性调谐模型实现,用于对目标的扫描路径进行分类。利用选择性调谐模型得到了扫描路径的一种形式。神经网络将这个扫描路径作为输入,并给出估计的类作为输出。整个结构可以从各种各样的例子中学习如何以监督的方式对扫描路径模式进行分类,然后识别数字图像中的物体。这种选择性视觉注意模型提供了一种解决图像选择和信息在视觉处理层次中的路由问题的方法。详细描述了这种方法,并给出了扫描路径分类的性能示例。结果表明,该模型具有鲁棒性和快速性
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Object classification using a MLP on a selective tuning model
Researchers have argued that an attentional mechanism is required to perform many vision tasks. In this paper we propose an approach to object classification that is based on the multi layer perceptron neural network implemented on the selective tuning model, in order to classify the scan-path of an object. A form of scan-path is obtained using the selective tuning model. The neural network takes as input this scan-path and gives, as output, the estimated class. The entire structure can learn, from a wide variety of examples, how to classify scan-path patterns in a supervised manner and then to recognize objects in digital images. This model of selective visual attention provides for a solution to the problems of selection in an image and information routing through the visual processing hierarchy. This approach is described in some detail and a performance example of scan-path classification is shown. The results confirm that the selective tuning model is both robust and fast
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