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Optimizing Deep Learning Parameters Using Genetic Algorithm for Object Recognition and Robot Grasping
Authors:Delowar Hossain  Genci Capi  Mitsuru Jindai
Abstract:The performance of deep learning (DL) networks has been increased by elaborating the network structures. However, the DL netowrks have many parameters, which have a lot of influence on the performance of the network. We propose a genetic algorithm (GA) based deep belief neural network (DBNN) method for robot object recognition and grasping purpose. This method optimizes the parameters of the DBNN method, such as the number of hidden units, the number of epochs, and the learning rates, which would reduce the error rate and the network training time of object recognition. After recognizing objects, the robot performs the pick-and-place operations. We build a database of six objects for experimental purpose. Experimental results demonstrate that our method outperforms on the optimized robot object recognition and grasping tasks.
Keywords:Deep learning (DL)   deep belief neural network (DBNN)   genetic algorithm (GA)   object recognition   robot grasping
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