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Implementation of Neural Network Back Propagation Training Algorithm on FPGA

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Academic year: 2020

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Figure

Figure 1: Architecture of multi-layer artificial neural network
Figure 2: Structure of 2:2:2:1Neural Network
Figure 3: The N-K-N Neural Network
Figure 4: Flow Graph for Image Compression
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