The Distinction between R-CNN and Fast R-CNN in Image Analysis: A Performance Comparison
DOI:
https://doi.org/10.24203/ajas.v10i5.7064Keywords:
Artificial intelligence, Deep learning, Convolutional neural network, Artificial neural networksAbstract
Deep learning techniques have become vital in many fields in the modern era because they are excellent at analysing and predicting real big data to act in different situations. Although it is marvellous in many aspects, it is prone to misinterpretation of data, so teams of experienced specialists cannot be dispensed with in following up on the execution stages of data analysis. Convolutional Neural Network is one of the most significant deep learning techniques. It is widely employed in visual image analysis. In this article, R-CNN and Fast R-CNN are summarised and compared and are the best in image analysis. This article concluded that the most suitable performance is for Fast R-CNN in testing and training.
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