4996648 Neural network using random binary code

1991 ◽  
Vol 3 (3) ◽  
pp. VII
Keyword(s):  
2020 ◽  
Vol 34 (01) ◽  
pp. 1145-1152 ◽  
Author(s):  
Zeping Yu ◽  
Rui Cao ◽  
Qiyi Tang ◽  
Sen Nie ◽  
Junzhou Huang ◽  
...  

Binary code similarity detection, whose goal is to detect similar binary functions without having access to the source code, is an essential task in computer security. Traditional methods usually use graph matching algorithms, which are slow and inaccurate. Recently, neural network-based approaches have made great achievements. A binary function is first represented as an control-flow graph (CFG) with manually selected block features, and then graph neural network (GNN) is adopted to compute the graph embedding. While these methods are effective and efficient, they could not capture enough semantic information of the binary code. In this paper we propose semantic-aware neural networks to extract the semantic information of the binary code. Specially, we use BERT to pre-train the binary code on one token-level task, one block-level task, and two graph-level tasks. Moreover, we find that the order of the CFG's nodes is important for graph similarity detection, so we adopt convolutional neural network (CNN) on adjacency matrices to extract the order information. We conduct experiments on two tasks with four datasets. The results demonstrate that our method outperforms the state-of-art models.


Author(s):  
Zhengping Luo ◽  
Tao Hou ◽  
Xiangrong Zhou ◽  
Hui Zeng ◽  
Zhuo Lu

There are several organisms on oceans. Among the organisms coral reefs are the one with 800 species. Classifying coral is a difficult task. Scientist classify the coral organism and put in to groups based on their characteristics. There are several machine learning algorithms are implemented to analyzer and classify the coral species. The main aim of this work is to effectively use handcrafted features with deep features for classifying the coral classes. Here the state of art feature descriptors such as Local Binary Pattern, Local Arc Pattern and Improved Webbers Binary Code are proposed to extract the features of coral. The results which obtained can be further improved by combining these local descriptors with convolution neural network .The feature extracted by above methods are classified using KNN and Random Forest. Experiments with these methods are conducted using EILAT dataset. The Experimental results obtained by these methods demonstrate the effectiveness and robustness of our proposed method.


2021 ◽  
Vol 14 (1) ◽  
pp. 68-79
Author(s):  
С.Ю. Удовиченко ◽  
А.Д. Писарев ◽  
А.Н. Бусыгин ◽  
А.Н. Бобылев

Во входном и выходном устройствах биоморфного нейропроцессора происходят первичная и конечная обработка информации. Представлены результаты по сжатию на входе цифровой информации и ее кодированию в импульсы, а также по декодированию информации об активации нейронов на выходе в цифровой двоичный код. Представлена реализация аппаратной нейросети процессора на основе оригинальной биоморфной электрической модели нейрона. Приведены результаты SPICE-моделирования и экспериментального исследования процессов обработки сигналов в режимах маршрутизации выходных импульсов нейронов на синапсы других нейронов в логической матрице, скалярного умножения матрицы чисел на вектор, а также ассоциативного самообучения в запоминающей матрице. Впервые продемонстрирована генерация новой ассоциации (нового знания) как в компьютерном моделировании, так и в изготовленном мемристорно-диодном кроссбаре, в отличие от самообучения в существующих аппаратных нейросетях с синапсами на базе дискретных мемристоров. Primary and ultimate information processing takes place in the input and output devices of the biomorphic neuroprocessor. The results are presented on the compression of digital information at the input and its coding into pulses, as well as on the decoding of information about the activation of neurons at the output into a digital binary code. An implementation of a hardware neural network of a processor based on an original biomorphic electrical model of a neuron is presented. The results of SPICE modeling and experimental research of signal processing processes in the modes of routing neuron output pulses to synapses of other neurons in a logical matrix, scalar multiplication of a matrix of numbers by a vector, and associative selflearning in a memory matrix are presented. For the first time, the generation of a new association (new knowledge) was demonstrated both in computer simulation and in a fabricated memristor-diode crossbar, in contrast to self-learning in existing hardware neural networks with synapses based on discrete memristors.


2000 ◽  
Vol 25 (4) ◽  
pp. 325-325
Author(s):  
J.L.N. Roodenburg ◽  
H.J. Van Staveren ◽  
N.L.P. Van Veen ◽  
O.C. Speelman ◽  
J.M. Nauta ◽  
...  

2004 ◽  
Vol 171 (4S) ◽  
pp. 502-503
Author(s):  
Mohamed A. Gomha ◽  
Khaled Z. Sheir ◽  
Saeed Showky ◽  
Khaled Madbouly ◽  
Emad Elsobky ◽  
...  

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