Matteo Pera
Exploring Convolutional Neuronal Networks for RGB-based Object Recognition.
Rel. Edgar Ernesto Sanchez Sanchez, Pablo Pedro Sanchez Espeso. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Elettronica (Electronic Engineering), 2020
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Abstract
This project consists in developing a code able to recognize objects from images, the code can be then implemented on a drone or other system to enable a self-driving mode. In order to achieve this result the structure is based on a Convolutional Recursive Neural Network, CRNN, obtained from the fusion of two standard neural networks: Convolutional Neural Network (CNN) and Recursive Neural Network (RNN). The CNN is used as features extractor and its output is passed to the RNN that elaborate them exploiting its tree-like structure. The reason to join those two networks is that the RNN improves considerably the accuracy performance respect to a CNN alone.
The dataset used in this work is the Washington RGBD which contains almost 8500 different images divided in 51 different classes representing objects
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