The Power of Zero

The Power of Zero – We show that, in a variety of domains, the entropy of a function is one of two kinds. The true entropy of a function is, in turn, correlated to the real amount of energy the function has. Our main result is that an exponential function is a function of more than one degree of the entropy of a function, and if the entropy of the function is correlated to the real amount of energy, then the function (or function of functions) is a function of at most some degree of entropy. We show that this correspondence yields a general distribution that is capable of being applied to many real-world problems.

Deep Learning (DL) has been successfully applied to images in many different applications. In spite of its success, the current state-of-the-art image recognition system is not yet able to fully utilize the generative techniques. In this paper, we explore the effectiveness of a deep learning approach. The learning is based on a classifier, i.e., the convolutional network, which is trained on image features, to improve the recognition accuracy of the system. We have done this through two different methods, namely a deep feed-forward network and a fully convolutional neural network trained on the input image feature. In this paper, we investigate whether deep learning can be considered robust to the loss of discriminative features. The experimental results show that our deep learning approach achieves comparable or better recognition accuracy compared to one baseline system. We also analyze our proposed method on an RGB-D image and compare it to the state-of-the-art state-of-the-art model.

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The Power of Zero

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  • The Computational Phenomenon of Quantum-like Particles

    Tunneling the Two-level Dynamic Range of Images via Deep LearningDeep Learning (DL) has been successfully applied to images in many different applications. In spite of its success, the current state-of-the-art image recognition system is not yet able to fully utilize the generative techniques. In this paper, we explore the effectiveness of a deep learning approach. The learning is based on a classifier, i.e., the convolutional network, which is trained on image features, to improve the recognition accuracy of the system. We have done this through two different methods, namely a deep feed-forward network and a fully convolutional neural network trained on the input image feature. In this paper, we investigate whether deep learning can be considered robust to the loss of discriminative features. The experimental results show that our deep learning approach achieves comparable or better recognition accuracy compared to one baseline system. We also analyze our proposed method on an RGB-D image and compare it to the state-of-the-art state-of-the-art model.


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