Flower recognition method based on convolutional neural network (CNN) with ReLU activation function
A convolutional neural network and flower recognition technology, applied in the field of image recognition, can solve the problems of slow recognition speed and low recognition rate, and achieve the effect of fast training speed, reducing the number of parameters, and good effect.
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[0048] 1 Image preprocessing
[0049] The experiment was realized under the platform of MatlabR2014a. Preprocessing was performed by image grayscale and bilinear interpolation.
[0050] The color will cause some interference to the identification of flower species, and the color image has a large storage capacity and is inconvenient to process. Therefore, it is necessary to convert the color image into a grayscale image that contains the same amount of information and the processing process is simpler and faster. This process is called Grayscale processing is beneficial to modularize the image, eliminate image noise to obtain a better binarized image, and reduce the amount of calculation for image processing.
[0051]After the image is grayscaled, the size of the input image may vary, some images have a larger resolution, and some are smaller. And the aspect ratio is not necessarily the same. The convolutional neural network structure in this paper requires a fixed input im...
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