Abstract

The field of artificial intelligence (AI) is very promising with the emergence of machine learning and deep learning algorithms. The rise of convolutional neural networks (CNN) is very propitious in deep learning as it is more accurate and powerful than previously known soft computational models like artificial neural networks (ANN) and recurrent neural networks (RNN). CNN is ANN with steroids. These soft computational models are inspired by biological models that give an approximate solution to image-driven pattern recognition problems. The near perfect precision of CNN models offers a better way to recognize patterns and solve real-world problems and provide approximate solutions which are near precision. These technologies have enhanced the trust with humans. Its results have been accepted widely. This chapter aims to provide brief information about CNNs by introducing and discussing recent papers published on this topic and the methods employed by them to recognize patterns. This chapter also aims to provide information regarding dos and don'ts while using different CNN models.

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