In the past two decades in particular, artificial neural networks have led to new approaches and processes in machine learning in many areas. They have replaced many existing processes. In some areas, they even exceed human performance. Impressive progress has been made in the area of image recognition and classification. Above all, this includes the introduction of convolutional neural networks (ConvNets). They belong to the class of neural networks. The first ConvNet was developed by LeCun et al. in 1989. ConvNets were especially developed to enhance image processing. Therefore, they provide a unique architecture. Due to their structure and functionality, ConvNets are particularly well suited within this field of application compared to other methods.
Content
1 Introduction
1.1 Motivation
2 The Architecture of ConvNets and Data Processing
2.1 The Convolutional Layer
2.1.1 Hyperparameters and filter weights
2.1.2 Activation functions und Biases
2.2 The Pooling Layer
2.3 The Fully-Connected Layer
2.4 Processing of colored images
3 Advantages of Convolutional Neural Networks
3.1 Parameter Reduction
3.1.1 Weight Sharing in Convolutional Layers
3.1.2 Dimensionality Reduction via Pooling
3.2 Object Detection
4 Application to the MNIST Dataset
5 Summary
6 Literature
7 Appendix
7.1 Python Code
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Laden Sie Ihre eigenen Arbeiten hoch! Geld verdienen und iPhone X gewinnen. -
Laden Sie Ihre eigenen Arbeiten hoch! Geld verdienen und iPhone X gewinnen. -
Laden Sie Ihre eigenen Arbeiten hoch! Geld verdienen und iPhone X gewinnen. -
Laden Sie Ihre eigenen Arbeiten hoch! Geld verdienen und iPhone X gewinnen.