state identification
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2022 ◽  
Vol 2160 (1) ◽  
pp. 012078
Author(s):  
Xinhai Li ◽  
Haixin Luo ◽  
Lingcheng Zeng ◽  
Chenxu Meng ◽  
Yanhe Yin

Abstract Currently, the check of the relay protection pressure plate’s throw-out status is mainly carried out manually, due to the extremely large number of decompression plates, manual methods can cause detection errors due to fatigue. This paper proposes the processing of relay protection pressure plate photographs by using image processing techniques, the Faster R-CNN image recognition algorithm uses the feature of generating detection frames directly using RPN to identify the platen throwback status of the processed platen images, greatly improving the speed and accuracy of the detection frame generation. The experimental results show that, the method proposed in this paper effectively solves the problem of errors arising from manual verification checks of platen throwbacks, reduced workload for substation staff, the platen recognition rate can be over 98% correct.


2021 ◽  
Vol 17 (12) ◽  
pp. e1009626
Author(s):  
Phuc Nguyen ◽  
Sylvia Chien ◽  
Jin Dai ◽  
Raymond J. Monnat ◽  
Pamela S. Becker ◽  
...  

Identification of cell phenotypic states within heterogeneous populations, along with elucidation of their switching dynamics, is a central challenge in modern biology. Conventional single-cell analysis methods typically provide only indirect, static phenotypic readouts. Transmitted light images, on the other hand, provide direct morphological readouts and can be acquired over time to provide a rich data source for dynamic cell phenotypic state identification. Here, we describe an end-to-end deep learning platform, UPSIDE (Unsupervised Phenotypic State IDEntification), for discovering cell states and their dynamics from transmitted light movies. UPSIDE uses the variational auto-encoder architecture to learn latent cell representations, which are then clustered for state identification, decoded for feature interpretation, and linked across movie frames for transition rate inference. Using UPSIDE, we identified distinct blood cell types in a heterogeneous dataset. We then analyzed movies of patient-derived acute myeloid leukemia cells, from which we identified stem-cell associated morphological states as well as the transition rates to and from these states. UPSIDE opens up the use of transmitted light movies for systematic exploration of cell state heterogeneity and dynamics in biology and medicine.


2021 ◽  
pp. 002029402110648
Author(s):  
Mo-chao Pei ◽  
Hong-ru Li ◽  
He Yu

Monitoring the degradation state of hydraulic pumps is of great significance to the safe and stable operation of equipment. As an important step, feature extraction has always been challenging. The non-stationary and nonlinear characteristics of vibration signals are likely to weaken the performance of traditional features. The two-dimensional image representation of vibration signals can provide more information for feature extraction, but it is challenging to obtain sufficient information based on small-size images. To solve these problems, a method for feature extraction based on modified hierarchical decomposition (MHD) and image processing is proposed in this paper. First, a set of signals decomposed by MHD are converted into gray-scale images. Second, features from accelerated segment test (FAST) algorithm are applied to detecting the feature points of the gray-scale image. Third, the real part of Gabor filter bank is used to convolve the images, and the responses of feature points are used to calculate histograms that are regarded as feature vectors. The method for feature extraction fully acquires the multi-layered texture information of small-size images and removes the redundant information. Furthermore, support vector machine (SVM) and nondominated sorting genetic algorithm II (NSGA-II) are introduced to conduct feature selection and state identification. NSGA-II and SVM can conduct the joint optimization of these two goals. The details of the proposed method are validated using experimental data, and the results show that the highest recognition rate of our proposed method can reach 100%. The results of the comparison among the proposed method, local binary pattern (LBP), and one-dimensional ternary patterns (1D-TPs) certify the superiorities of the proposed method. It obtains the highest classification accuracy (99.7%–98%) and the lowest feature set dimension (13–10).


2021 ◽  
Vol 8 (1) ◽  
Author(s):  
Bilal Elghadyry ◽  
Faissal Ouardi ◽  
Zineb Lotfi ◽  
Sébastien Verel

AbstractDistinguishing sequences are widely used in finite state machine-based conformance testing to solve the state identification problem. In this paper, we address the scalability issue encountered while deriving distinguishing sequences from complete observable nondeterministic finite state machines by introducing a massively parallel MapReduce version of the well-known Exact Algorithm. To the best of our knowledge, this is the first study to tackle this task using the MapReduce approach. First, we give a concise overview of the well-known Exact Algorithm for deriving distinguishing sequences from nondeterministic finite state machines. Second, we propose a parallel algorithm for this problem using the MapReduce approach and analyze its communication cost using Afrati et al. model. Furthermore, we conduct a variety of intensive and comparative experiments on a wide range of finite state machine classes to demonstrate that our proposed solution is efficient and scalable.


2021 ◽  
Author(s):  
Samal S. Zhumazhanova ◽  
Alexey E. Sulavko ◽  
Pavel S. Lozhnikov

2021 ◽  
Author(s):  
zhang yingzhe ◽  
Zhao Qiancheng ◽  
He Shen ◽  
Wang Xian

2021 ◽  
pp. 3-12
Author(s):  
Vyacheslav Yu. Korolyov ◽  
◽  
Maksim I. Ogurtsov ◽  
Anatoliy I. Kochubinskyi ◽  
◽  
...  

Introduction. In recent years, military conflicts are moving to a fundamentally new level of development, which is associated with the widespread use of geographically distributed large groups of remotely controlled robotic systems, the rapid growth of information volumes, a significant increase in the speed of its processing, instant messaging to increase situational awareness, management, rapid response, etc. Purpose. The article is devoted to solving an urgent scientific problem — the development of an algorithm for state identification of military objects and personnel. The problems of using modern cryptographic algorithms for state identification, which use data obtained by other stations of the air defense system and radio intelligence, combined in a special network, are considered. Results. A new encryption key exchange protocol and a rationale for choosing a cryptographic algorithm that can be used in real-time systems with low computational performance are proposed. To ensure the stability of the use of electronic warfare tools, it is proposed to use software-defined radio stations based on programmable logic matrices as a hardware basis, since they allow changing the type of signal-code structures, which also applies frequency ranges without replacing radio engineering blocks. Conclusions. With the increase in the number of remotely controlled military equipment objects on the battlefield, the problem of positioning military personnel and equipping them with network communication means requires a review of the methods and algorithms used for state recognition. The paper proposes a new algorithm for state identification of objects and identification of military personnel using symmetric cryptographic algorithms and the use of a secure Protocol for exchanging information received from the network of the Armed Forces of Ukraine. This approach can potentially increase the performance and quality of the identification system.


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