A Chip Surface Defect Detection Method Based on Convolutional Denoising Autoencoder
A self-encoder, surface detection technology, applied in instruments, image analysis, biological neural network models, etc., to achieve the effect of enhancing contrast, high robustness, and suppressing interference
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[0040] In this embodiment, a chip surface defect detection method based on convolution denoising self-encoder, such as figure 1 As shown, proceed as follows:
[0041] Step 1: Defect-free image reconstruction based on convolutional denoising autoencoder:
[0042] Step 1.1: Build a convolutional denoising self-encoder and use it as a network model:
[0043]The network model is composed of an encoder, a fully connected layer and a decoder; the encoder is composed of n=4 convolutional layers and 4 pooling layers; the decoder is composed of 4 deconvolution layers; and the encoder and The decoder is connected through a fully connected layer; the 4 deconvolution layers use the nearest neighbor interpolation method and convolution to realize the deconvolution function. Such as figure 2 As shown, the specific parameters are as follows:
[0044] Input: 28×28×1 single-channel png format picture.
[0045] Encoder: Consists of 4 convolutional (C) layers and 4 pooling (P) layers, each...
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