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Garments Texture Design Class Identification Using Deep Convolutional Neural Network

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Figure

Figure 2. The full architecture of AlexNet Model
Figure 3. The full architecture of VGG_S Model
Figure 4. The full architecture of our Proposed model
Figure 6.Example of Clothing Attribute dataset: Column 1 to 6 represents example of Floral,Graphics, Plaid, Solid Color, Spotted and Striped garments respectively.
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