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Modeling and possible implementation of self-learning equivalence-convolutional neural structures for auto-encoding-decoding and clusterization of images

机译:用于图像自动编码和聚类的自学习等价卷积神经结构的建模和可能的实现

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Self-learning equivalent-convolutional neural structures (SLECNS) for auto-coding-decoding and image clustering are discussed. The SLECNS architectures and their spatially invariant equivalent models (SI EMs) using the corresponding matrix-matrix procedures with basic operations of continuous logic and non-linear processing are proposed. These SI EMs have several advantages, such as the ability to recognize image fragments with better efficiency and strong cross-correlation. The proposed clustering method of fragments with regard to their structural features is suitable not only for binary, but also color images and combines self-learning and the formation of weight clustered matrix-patterns. Its model is constructed and designed on the basis of recursively processing algorithms and to k-average method. The experimental results confirmed that larger images and 2D binary fragments with a large numbers of elements may be clustered. For the first time the possibility of generalization of these models for space invariant case is shown. The experiment for an image with dimension of 256x256 (a reference array) and fragments with dimensions of 7x7 and 21x21 for clustering is carried out. The experiments, using the software environment Mathcad, showed that the proposed method is universal, has a significant convergence, the small number of iterations is easily, displayed on the matrix structure, and confirmed its prospects. Thus, to understand the mechanisms of self-learning equivalence-convolutional clustering, accompanying her to the competitive processes in neurons, and the neural auto-encoding-decoding and recognition principles with the use of self-learning cluster patterns is very important which used the algorithm and the principles of non-linear processing of two-dimensional spatial functions of images comparison. These SIEMs can simply describe the signals processing during the all training and recognition stages and they are suitable for unipolar-coding multilevel signals. We show that the implementation of SLECNS based on known equivalentors or traditional correlators is possible if they are based on proposed equivalental two-dimensional functions of image similarity. The clustering efficiency in such models and their implementation depends on the discriminant properties of neural elements of hidden layers. Therefore, the main models and architecture parameters and characteristics depends on the applied types of non-linear processing and function used for image comparison or for adaptive-equivalental weighing of input patterns. Real model experiments in Mathcad are demonstrated, which confirm that non-linear processing on equivalent functions allows you to determine the neuron winners and adjust the weight matrix. Experimental results have shown that such models can be successfully used for auto- and hetero-associative recognition. They can also be used to explain some mechanisms known as "focus" and "competing gain-inhibition concept". The SLECNS architecture and hardware implementations of its basic nodes based on multi-channel convolvers and correlators with time integration are proposed. The parameters and performance of such architectures are estimated.
机译:讨论了用于自动编码解码和图像聚类的自学习等效卷积神经结构(SLECNS)。提出了SLECNS体系结构及其空间不变等效模型(SI EM),该模型使用了具有连续逻辑和非线性处理基本操作的相应矩阵矩阵过程。这些SI EM具有几个优点,例如能够以更高的效率和强大的互相关性识别图像片段。就片段的结构特征提出的聚类方法不仅适用于二进制图像,还适用于彩色图像,并且结合了自学习和权重聚类矩阵模式的形成。它的模型是在递归处理算法和k平均方法的基础上构建和设计的。实验结果证实,较大的图像和具有大量元素的2D二进制片段可能会聚类。首次显示了针对空间不变情况将这些模型推广的可能性。对尺寸为256x256(参考阵列)的图像以及尺寸为7x7和21x21的片段进行聚类的实验。使用软件环境Mathcad进行的实验表明,该方法具有通用性,收敛性显着,迭代次数少,易于在矩阵结构上显示,并证实了其前景。因此,了解自学习等价卷积聚类的机制,并伴随其在神经元中的竞争过程,以及使用自学习聚类模式的神经自动编码-解码和识别原理非常重要,该方法使用了算法与非线性处理原理对图像的二维空间函数进行比较。这些SIEM可以简单地描述所有训练和识别阶段中的信号处理,并且它们适用于单极编码多电平信号。我们表明,如果基于已知的等效器或传统的相关器的SLECNS基于图像相似性的建议等效二维函数,则可以实现。在这种模型中的聚类效率及其实现取决于隐藏层神经元的判别特性。因此,主要模型,体系结构参数和特性取决于非线性处理的应用类型以及用于图像比较或用于输入模式的自适应等效权重的函数。演示了Mathcad中的真实模型实验,该实验证实了对等效函数的非线性处理使您可以确定神经元赢家并调整权重矩阵。实验结果表明,这种模型可以成功地用于自动和异物关联识别。它们也可以用来解释一些称为“焦点”和“竞争增益抑制概念”的机制。提出了基于带时间积分的多通道卷积器和相关器的SLECNS基础节点的体系结构和硬件实现。估计了此类架构的参数和性能。

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