@article{MAKHILLJEAS2017122014929, title = {Colorimeter Using Artificial Neural Networks}, journal = {Journal of Engineering and Applied Sciences}, volume = {12}, number = {20}, pages = {5332-5337}, year = {2017}, issn = {1816-949x}, doi = {jeasci.2017.5332.5337}, url = {https://makhillpublications.co/view-article.php?issn=1816-949x&doi=jeasci.2017.5332.5337}, author = {Laura and}, keywords = {Convolutional neural network,fully-connected neural network,colorimeter,neural network architectures,colors}, abstract = {The following study presents the development of a color classification algorithm for convolutional neural networks and fully-connected neural networks which uses a database of 200 images per color and between 12 and 18 colors to be classified for the training of the two networks. Subsequently, a comparison was made between their accuracy percentages where the best results were 95.33% for the convolutional neural network and 93.33% for the fully connected in the recognition of 12 colors and 93.67 and 35.23% for 18 colors, respectively. Finally, the best network is selected to design a video recognition application and the results are presented.} }