Object Classification using Deep Neural Networks from Coded Diffraction Patterns

Author(s):  
David Morales ◽  
Andres Jerez ◽  
Henry Arguello
Author(s):  
Amira Ahmad Al-Sharkawy ◽  
Gehan A. Bahgat ◽  
Elsayed E. Hemayed ◽  
Samia Abdel-Razik Mashali

Object classification problem is essential in many applications nowadays. Human can easily classify objects in unconstrained environments easily. Classical classification techniques were far away from human performance. Thus, researchers try to mimic the human visual system till they reached the deep neural networks. This chapter gives a review and analysis in the field of the deep convolutional neural network usage in object classification under constrained and unconstrained environment. The chapter gives a brief review on the classical techniques of object classification and the development of bio-inspired computational models from neuroscience till the creation of deep neural networks. A review is given on the constrained environment issues: the hardware computing resources and memory, the object appearance and background, and the training and processing time. Datasets that are used to test the performance are analyzed according to the images environmental conditions, besides the dataset biasing is discussed.


Author(s):  
Joshua C. Peterson ◽  
Joshua T. Abbott ◽  
Thomas L. Griffiths

Deep neural networks have become increasingly successful at solving classic perception problems (e.g., recognizing objects), often reaching or surpassing human-level accuracy. In this abridged report of Peterson et al. [2016], we examine the relationship between the image representations learned by these networks and those of humans. We find that deep features learned in service of object classification account for a significant amount of the variance in human similarity judgments for a set of animal images. However, these features do not appear to capture some key qualitative aspects of human representations. To close this gap, we present a method for adapting deep features to align with human similarity judgments, resulting in image representations that can potentially be used to extend the scope of psychological experiments and inform human-centric AI.


Author(s):  
Bin Jia ◽  
Khanh D. Pham ◽  
Erik Blasch ◽  
Zhonghai Wang ◽  
Dan Shen ◽  
...  

2017 ◽  
Vol 7 (8) ◽  
pp. 826 ◽  
Author(s):  
Syed Rizvi ◽  
Gianpiero Cabodi ◽  
Gianluca Francini

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