Using back-propagation networks to assess several image representation schemes for object recognition

J. Lubin, K. Jones, A. Kornhauser
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引用次数: 7

Abstract

Summary form only given, as follows. Two chapters of research are presented. The first constitutes a demonstration that backpropagation networks can be used as a content addressable memory for visual objects represented within digitized real-world images. For networks encoding two or three classes of traffic signs, classification generalization is demonstrated for objects at new positions on the image frame and also for new instances of a trained class of object. The new instance may even be a somewhat degraded representation. Given this optimistic introduction, the work evolves into a second, more comparative chapter. In this further probe, packpropagation networks are used as content addressable memories with which to determine the relative value of several different visual object representation schemes. These representation schemes are tested along multiple parameters to deduce the efficacy of the scheme itself, and the influence of network parameter changes on the learning and categorization of objects.<>
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使用反向传播网络评估几种用于目标识别的图像表示方案
仅给出摘要形式,如下。本文分两章进行了研究。第一个构成了反向传播网络可以用作数字化真实世界图像中表示的视觉对象的内容可寻址存储器的演示。对于编码两种或三类交通标志的网络,对图像帧上新位置的对象以及训练过的对象类别的新实例进行了分类泛化。新实例甚至可能是某种程度上降级的表示。在这种乐观的介绍下,本书进入了第二章,更具对比性。在这个进一步的探索中,包传播网络被用作内容可寻址存储器,用它来确定几种不同的视觉对象表示方案的相对价值。这些表示方案沿着多个参数进行测试,以推断方案本身的有效性,以及网络参数变化对对象学习和分类的影响。
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