Abstract
The recognition of real-world objects demands the recognition and characterization of digital image samples. Automated methods for the detection and recognition of entity types have many significant commercial and industrial applications. While deep convolution neural networks (CNN) and machine learning (ML) concepts have contributed to the classification of globe items, they cannot fully scale the reliance of powerful GPUs to classify the key attributes of images. By using a Recurrent Neural Network (RNN) we tend to resolve the issue arisen in the previous systems. In particular, a hybrid approach using R-CNN and RNN has been proposed that improve the accuracy of object recognition and learn structured image attributes and begin image analysis. Specifically, we applied the transfer learning approach to pass the load parameters which were pre-trained on the Image web dataset to the RNN portion and follow a custom loss feature for the model to train and test more rapidly with precise weight parameters. Experimental results show that in comparison to CNN models like Resent, origin V3, etc., our proposed model achieved improved accuracy in categorizing universe pictures.
Cite
CITATION STYLE
Priyatharshini*, Dr. R., Ram. A.S, A., … Nirmal, G. N. (2019). Real-Time Object Recognition using Region based Convolution Neural Network and Recursive Neural Network. International Journal of Recent Technology and Engineering (IJRTE), 8(4), 2813–2818. https://doi.org/10.35940/ijrte.d8326.118419
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