Neural Networks through Shared Maps in Mobile Devices
Neural Networks through Shared Maps in Mobile Devices
Blog Article
We introduce a hybrid system composed of a convolutional neural network and a discrete graphical model for image recognition.This system improves upon traditional sliding window techniques for analysis of an image larger than the training data by hooded rashguard effectively processing the full input scene through the neural network in less time.The final result is then inferred from the neural network output through energy minimization to reach a more precize Track Jacket localization than what traditional maximum value class comparisons yield.
These results are apt for applying this process in a mobile device for real time image recognition.