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Volume 08 Issue 10 (October 2021)

S.No. Title & Authors Page No View
1

Title : Synchronization of Chaotic Gyro System Based on Higher Order Sliding Mode Control

Authors : Jing Zhang

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Abstract :

A chaotic gyro system to investigate the method for higher order sliding mode control design. The system is assumed to have uncertain parameters with known upper and lower bounds. We also design an optimal sliding surface for the sliding mode control. The control law is designed to guarantee the existence of the sliding mode around the nonlinear surface Simulations are carried out to demonstrate the utility of the control method.

1-4
2

Title : Research on the Integration Relationship of the Politics Course and Social Institutions for College Students

Authors : Wang Yaqiong

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Abstract :

General secretary Xi Jinping pointed out that we should combine the politics course with the social institutions to educate and to guide students to set great ambitions and be strivers, which highlights the importance of the unity of knowledge and practice. This requires us to always adhere to the unity of the theory and the practice, and to build a framework of collaborative education of college ideological and political education and social education. Based on the previous studies, this paper aims to establish a long-term mechanism for the integration relationship of the politics course and social institutions

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3

Title : A Review of Aesthetic Evaluation of Images

Authors : Zhao Zhuang, Li Wenchao

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Abstract :

Aesthetic image quality assessment (or aesthetic assessment) is the use of computers to automatically evaluate the "beauty" of images by simulating human perceptions and cognition of beauty [1]. Aesthetic image quality assessment is a new direction of intersection between computational aesthetics and computer vision, psychology, virtual reality, etc. Its core is to use computers to simulate human preferences for image content and composition, including the aesthetic stimuli formed under the influence of aesthetic factors such as images, so as to simulate human perception and cognition of beauty, automatically evaluate the "beauty" of images "The main purpose of this paper is to introduce the most recent work on the "aesthetics" of images. The main purpose of this paper is to present the recent developments in the evaluation of the aesthetic quality of images over the years.

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4

Title : Challenges faced by Africans students in China

Authors : Zaida Esther Quade Bedane

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Abstract :

The main objective of this paper is to address the challenges experienced by african students in China, as China is a country that over the past few years has received numerous foreigners,specially africans, mainly in the academic field, and Africa has developed a strong relationship with China over years . China has been one of the main destinations  for african students, who has welcomed the development of China and thus sought new horizons. However, moving from one place to another implies adapting it and can have strengths and weaknesses, so we decided to elaborate a work based on research and discussions about the challenges faced by african students in China. Which allows us to understand the problems or challenges faced by africans students in China in order to improve the solution of their problems in the future.

9-13
5

Title : A Review of Image Inpainting

Authors : Gang Wei

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Abstract :

As for actual content in the field of computer vision, image inpainting has increasingly become a research hotspot in recent years. Image inpainting is the task of restoring the lost image content according to the known image content. It has a broad application value in image editing, film and television stunt production, virtual reality, and digital cultural heritage protection. To make more researchers explore the theory and development of image restoration based on deep learning, this paper summarizes the research status in this field. Firstly, starting from the traditional image inpainting methods, this paper analyzes their existing problems, focuses on the overview of image inpainting methods based on deep learning, including image inpainting methods based on convolution neural network, generation countermeasure network, and cyclic neural network, introduces the principle and structure of various methods, and summarizes the application scope, advantages and disadvantages of various methods based on deep learning. Finally, the future research direction and focus have been prospected.

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6

Title : Generative Image Inpainting Through Edge Prediction Learning

Authors : Jialiang Yan

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Abstract :

In the past few years, deep learning technology has significantly improved image restoration. However, many of these techniques cannot reconstruct reasonable structures because they are usually too smooth and/or blurry. This article develops a new image restoration method that can better reproduce the exquisite details of the filled area. We propose a two-stage adversarial GAN network that includes an edge generator, followed by an image completion network. The edge generator makes the edges of the missing areas (regular and irregular) of the image illusion, and the image completion network uses the illusion to fill the missing areas of the image
Priori edge. We conducted an end-to-end evaluation of the publicly available datasets CelebA, Places2, and showed that it is superior in quantity and quality to the current state-of-the-art technology.

17-19
7

Title : Image Inpainting Through Coherent Semantic Attention

Authors : Jialiang Yan

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Abstract :

The latest deep learning-based approaches have shown  promising results for the challenging task of inpainting missing regions of an image. However, the existing methods often generate contents with blurry textures and distorted structures due to the discontinuity of the local pixels. From a semantic-level perspective, the local pixel dis continuity is mainly because these methods ignore the semantic relevance and feature continuity of hole regions. To handle this problem, we investigate the human behavior in repairing pictures and propose a fifined deep generative model-based approach with a novel coherent semantic attention (CSA) layer, which can not only preserve contextual structure but also make more effective predictions of missing parts by modeling the semantic relevance between the holes features. The task is divided into rough, refifinement as two steps and model each step with a neural network under the U-Net architecture, where the CSA layer is embedded into the encoder of refifinement step. To stabilize the network training process and promote the CSA layer to learn more effective parameters, we propose a consistency loss to enforce the both the CSA layer and the corresponding layer of the CSA in decoder to be close to the VGG feature layer of a ground truth image simultaneously. The experiments on CelebA, Places2, and Paris StreetView datasets have validated the effectiveness of our proposed methods in image inpainting tasks and can obtain images with a higher quality as compared with the existing state-of-the-art approaches.

20-22
8

Title : A Comprehensive Survey for Aspect-based Sentiment Classification

Authors : Zhilong Hu, Baoshan Sun

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Abstract :

With the rapid development of information technology, Internet review texts have also become an important source for people to find reference information for decision-making. It is very necessary to conduct sentiment analysis on these texts. Aspect-based sentiment analysis can calculate opinions, sentiments, evaluations and attitudes in the text, and realize automatic sentiment recognition. The focus of this survey is aspect-level sentiment analysis based on deep learning, and its purpose is to determine the sentiment polarity of the aspects mentioned in the document. The current research work still lacks the systematic classification of existing methods. This is the gap that our investigation aims to fill. In this article, an in-depth overview of the current state-of-the-art deep learning-based methods is presented to show the tremendous progress that has been made in this research direction. First, a comprehensive review of the latest research results of ABSA based on deep learning. Then, pointed out the future research directions in this field, which will be helpful for researchers.

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