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Optimizing Digital Hardware Perceptrons for Multi-Spectral Image Classification

机译:优化用于多光谱图像分类的数字硬件感知器

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We propose a system for solving pixel-based multi-spectral image classification problems with high throughput pipelined hardware. We introduce a new shared weight network architecture that contains both neural network and morphological network functionality. We then describe its implementation on Reconfigurable Computers. The implementation provides speed-up for our system in two ways. (1) In the optimization of our network, using Evolutionary Algorithms, for new features and data sets of interest. (2)In the application of an optimized network to large image databases, or directly at the sensor as required. We apply our system to 4 feature identification problems of practical interest, and compare its performance to two advanced software systems designed specifically for multi-spectral image classification. We achieve comparable performance in both training and testing. We estimate speed-up of two orders of magnitude compared to a Pentium III 500 MHz software implementation.
机译:我们提出了一种使用高吞吐量流水线硬件解决基于像素的多光谱图像分类问题的系统。我们引入了一种新的共享加权网络架构,该架构同时包含神经网络和形态网络功能。然后,我们描述其在可重配置计算机上的实现。该实现通过两种方式为我们的系统提供了加速。 (1)在我们的网络优化中,使用进化算法获得感兴趣的新功能和数据集。 (2)在将优化的网络应用于大型图像数据库时,或根据需要直接在传感器上使用。我们将我们的系统应用于实际感兴趣的4个特征识别问题,并将其性能与专为多光谱图像分类设计的两个高级软件系统进行比较。我们在培训和测试方面均达到可比的性能。与奔腾III 500 MHz软件实现相比,我们估计速度提高了两个数量级。

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