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High-dimensional neural-network artificial intelligence capable of quick learning to recognize a new smell, and gradually expanding the database

机译:能够快速学习识别新气味并逐步扩展数据库的高维神经网络人工智能

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We demonstrate that classical quadratic forms are not able to solve the problem of recognizing high-dimensional images. The “deep” Galushkin-Hinton neural networks can solve the problem of high-dimensional image recognition, but their training has exponential computational complexity. It is technically impossible to train and retrain a “deep” neural network rapidly. For mobile “artificial nose” systems we proposed to employ a number of “wide” neural networks trained in accordance with (GOST R 52633.5-2011). This standardized learning algorithm has a linear computational complexity, i.e. for each new smell image a time of about 0.3 seconds is sufficient for creating and training a new neural network with 2024 inputs and 256 outputs. This leads to the possibility of the rapid training of the artificial intelligence “artificial nose” and a gradual expansion of its database consisting of 10 000 or more trained artificial neural networks.
机译:我们证明经典的二次形式不能解决识别高维图像的问题。 “深层” Galushkin-Hinton神经网络可以解决高维图像识别的问题,但是其训练具有指数计算复杂性。从技术上讲,快速训练和再训练“深度”神经网络是不可能的。对于移动的“人工鼻子”系统,我们建议采用根据(GOST R 52633.5-2011)训练的许多“宽”神经网络。这种标准化的学习算法具有线性计算复杂度,即对于每个新的气味图像,大约0.3秒的时间足以创建和训练具有2024个输入和256个输出的新神经网络。这导致可能快速训练人工智能“人工鼻子”,并逐渐扩展其包含10 000个或更多训练有素的人工神经网络的数据库。

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