多属性识别,通用神经网络的关键

Jinxin Wei
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引用次数: 1

摘要

为了实现对目标多属性的识别,我对mnist数据集进行了重新设计,改变了数字的颜色、大小、位置。同时,我也相应更换了标签。我使用的深度神经网络是最常见的卷积神经网络。通过测试,我们可以得出结论,只要物体的属性差异可以用函数表示,我们就可以使用一个神经网络进行多属性识别。具体网络(生成网络)可以从网络学习到的属性中生成输入中很少包含的输出。由于网络是一个连续函数,因此具有良好的泛化能力。通过再一次测试,我们可以得出结论,只要在网络中加入输出节点和输入节点以及更多的参数,一个神经网络就可以做图像识别、语音识别、自然语言处理等事情。只要网络能处理不同的输入,这个网络就是通用的。经证明,全连接网络可以完成卷积神经网络和递归神经网络的工作,因此全连接网络是通用网络。联觉现象是多输入、多输出的结果。心灵连接可以通过通用网络实现,将输出转化为输入。心灵联系是创造的关键,联觉是辅助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-attribute Recognition,the key to Universal Neural Network
To achieve the recognition of multi-attribute of object, I redesign the mnist dataset, change the color, size, location of the number. Meanwhile, I change the label accordingly. The deep neural network I use is the most common convolution neural network. Through test, we can conclude that we can use one neural network to recognize multi-attribute so long as the attribute difference of objects can be represented by functions. The Concrete network (generation network) can generate the output which the input rarely contained from the attributes the network learned. Its generalization ability is good because the network is a continuous function. Through one more test, we can conclude that one neural network can do image recognition, speech recognition, nature language processing and other things so long as the output node and the input node and more parameters add into the network. The network is universal so long as the network can process different inputs. By proof, fully connected network can do what convolution neural network and recurrent neural network do, so fully connected network is the universal network. The phenomenon of synesthesia is the result of multi-input and multi-output. Connection in mind can realize through the universal network and sending the output into input. Connection in mind is the key of creativity, synesthesia is the assistant.
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