In Computer vision systems, computer vision works by imitating humans in their vision way which is known as the human vision system (HVS). In HVS, humans use their eyes and brains in order to see and classify any object around them. Hence, computer vision systems imitate HSV by developing several algorithms for classifying images and objects. The main goal of this paper is to propose a model for identifying and classifying the Arabic handwritten digits with high accuracy. The concept of deep learning via the convolutional neural network (CNN) with the ADBase database is used to achieve the goal. The training is done by having a 3*3 and 5*5 filters. Basically, while the classification phase distinct learning rates are used to train the network. The obtained results are encouraging and promising.
Amsal PardameanDewy YulianaSri WatmahSisferi HikmawanSfenrianto SfenriantoSisferi HikmawanMaster of Computer Science, Postgraduate Programs STMIK Nusa Mandiri, Jakarta, Indonesia.Sfenrianto
Hongjian ZhanShujing LyuYue Lu