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Object Detection Using Region-Conventional Neural Network (RCNN) and OpenCV 基于区域常规神经网络(RCNN)和OpenCV的目标检测
Pub Date : 2023-07-10 DOI: 10.4018/ijdai.315277
K. Archana, Kamakshi Prasad
Object detection is used in almost every real-world application such as autonomous traversal, visual system, face detection, and even more. This paper aims at applying object detection technique to assist visually impaired people. It helps visually impaired people to know about the objects around them to enable them to walk free. A prototype has been implemented on a Raspberry PI3 using OpenCV libraries, and satisfactory performance is achieved. In this paper, a detailed review has been carried out on object detection using region-conventional neural network (RCNN)-based learning systems for a real-world application. This paper explores the various process of detecting objects using various object detections methods and walks through detection including a deep neural network for SSD implemented using Caffee model.
物体检测几乎用于每个现实世界的应用程序,例如自主遍历,视觉系统,人脸检测等等。本文旨在将目标检测技术应用于视障人士的视觉辅助。它帮助视障人士了解周围的物体,使他们能够自由行走。使用OpenCV库在Raspberry PI3上实现了一个原型,并取得了令人满意的性能。本文详细介绍了基于区域-常规神经网络(RCNN)的学习系统在实际应用中的目标检测。本文探讨了使用各种对象检测方法检测对象的各种过程,并介绍了使用Caffee模型实现的SSD深度神经网络的检测。
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引用次数: 0
Machine Learning Techniques-Based Banking Loan Eligibility Prediction 基于机器学习技术的银行贷款资格预测
Pub Date : 2022-07-01 DOI: 10.4018/ijdai.313935
Anjali Agarwal, Roshni Rupali Das, Ajanta Das
In our daily life, it is difficult to meet financial demand while in crisis. This financial crisis may be solved with financial assistance from the banks. The financial assistance is nothing but availing loan from the bank with proper agreement to repay the amount including calculated interest within the loan approved tenure. The customer can only avail loans against the submission of some valid and important supportive documents. However, although the customer is aware of the whole process of repayment and installment along with loan approval tenure, most of the time it is hard to get the approved loan within a shorter period. Therefore, the objective of this paper is to automate this manual and long process by predicting the chance of approval of the loan. The novelty of this research article is to apply machine learning techniques and classification algorithms to predict loan eligibility through an automatic online loan application process
在我们的日常生活中,在危机中很难满足金融需求。这次金融危机可能会在银行的财政援助下得到解决。财政援助只不过是通过适当的协议从银行获得贷款,并在批准的贷款期限内偿还包括计算利息在内的金额。客户只有提交一些有效和重要的支持文件才能获得贷款。然而,尽管客户知道还款和分期的全过程以及贷款审批期限,但大多数情况下,很难在较短的期限内获得批准的贷款。因此,本文的目标是通过预测贷款批准的机会来自动化这个手动的长过程。本研究文章的新颖之处在于应用机器学习技术和分类算法,通过自动在线贷款申请过程来预测贷款资格
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引用次数: 0
Smart System Using IoT to Protect the Kitchen From Fire 使用物联网保护厨房免受火灾的智能系统
Pub Date : 2022-07-01 DOI: 10.4018/ijdai.313936
Veena Bharti, Vineet Rathi, Harsh Verma
This paper examines the new viewpoints that have evolved as a result of the advent of internet of things (IoT) in the kitchen. Companies are now exploring how internal knowledge and skillsets relate to the new technical needs that evolving digital environment entails; and they are learning more about IoT and connected products going through internal research. Accordingly, they hope to rely on the internet of things to keep kitchens safe. Cooking leads to cause of house fires and fire injuries. The bulk of the fires in the building started in the kitchens of the units. Three elements are required to start and maintain a fire. The human body is made up of these three elements: fuel, heat, and oxygen. Fire safety measures includes protect building from damage and death. An IoT-based system detects CO2 and Methane (CH4) levels in the environment and kitchen, as well as temperature. It has the ability to prevent accidents and save lives and property. When sensor data is synced, an IoT-based controlling device sends notifications to the mobile phones of the chosen number set in the alert section.
本文探讨了由于厨房中物联网(IoT)的出现而演变的新观点。公司现在正在探索如何将内部知识和技能与不断发展的数字环境所带来的新技术需求联系起来;他们正在通过内部研究学习更多关于物联网和互联产品的知识。因此,他们希望依靠物联网来保证厨房的安全。烹饪是引起房屋火灾和火灾伤害的原因。大楼里的大部分火灾是从各单元的厨房开始的。点燃并保持火需要三个要素。人体由这三种元素组成:燃料、热量和氧气。消防安全措施包括保护建筑物免受破坏和死亡。基于物联网的系统可以检测环境和厨房中的二氧化碳和甲烷(CH4)水平,以及温度。它有能力防止事故,挽救生命和财产。当传感器数据同步时,基于物联网的控制设备将通知发送到警报部分中设置的选定号码的手机。
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引用次数: 0
Efficient Detection of Humans in Flames Using HOG as a Feature Criterion in Machine Learning 利用HOG作为机器学习特征准则的火焰中人的有效检测
Pub Date : 2022-07-01 DOI: 10.4018/ijdai.315276
U. Kumar
Detection of humans in flames is a challenging task. The task in this work is classified into two stages. The first is detection of fire, and the second is detection of human. The proposed method involves fire detection based on colour format YCbCr for image preprocessing. It further uses a histogram of oriented gradient (HOG) and support vector machine (SVM) to detect a human in the fire. It evaluates several motion-based feature sets for human detection in the form of videos. In this work, both modules were integrated to make them work together. For the detection of fire, four different rules involving colour thresholding were used and background differencing was used for moving object detection. The main objective of this work is to spot the humans in the flames who are trapped in it so they can be rescued quickly. This can help the firefighters in rapid planning and serious zone detection. The proposed model has 81% efficiency, which has outperformed the existing models for detection of humans in flames.
在火焰中探测人类是一项具有挑战性的任务。本工作的任务分为两个阶段。第一个是探测到火,第二个是探测到人。该方法采用基于彩色格式YCbCr的火灾检测方法进行图像预处理。该算法进一步利用定向梯度直方图(HOG)和支持向量机(SVM)来检测火灾中的人。它评估了几个基于动作的特征集,用于视频形式的人类检测。在这项工作中,这两个模块被集成在一起,使它们协同工作。对于火灾的检测,使用了四种不同的规则,包括颜色阈值,并使用背景差分进行运动目标检测。这项工作的主要目的是发现被困在火焰中的人,以便他们能够迅速获救。这可以帮助消防员快速规划和严重的区域检测。该模型的效率为81%,优于现有的火焰中人的检测模型。
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引用次数: 0
Embedded ANN-based Forest Fire Prediction Case Study of Algeria 基于嵌入式神经网络的阿尔及利亚森林火灾预测案例研究
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.291085
One of the major environmental challenges is forest fires, each year millions of hectares of forest are destroyed throughout the world, resulting in economic and ecological damages, as well as the loss of human life. Therefore, predicting forest fires is of great importance for governments; However, there is still limited study on this topic in Algeria. In this paper, we present an application of artificial neural networks to predict forest fires in embedded devices. We used meteorological data obtained from wireless sensor networks. In the experimentation, nine machine learning model are compared. The findings from this study make several contributions to the current literature. First, our model is suitable for embedded and real-time training and prediction. Moreover, it should provide better performances and accurate predictions against other models.
森林火灾是主要的环境挑战之一,每年全世界有数百万公顷的森林被摧毁,造成经济和生态破坏,以及人类生命的损失。因此,预测森林火灾对政府来说非常重要;然而,阿尔及利亚对这一主题的研究仍然有限。本文介绍了人工神经网络在嵌入式设备森林火灾预测中的应用。我们使用了从无线传感器网络获得的气象数据。在实验中,对9种机器学习模型进行了比较。本研究的发现对当前的文献有几个贡献。首先,我们的模型适合于嵌入式和实时的训练和预测。此外,相对于其他模型,它应该提供更好的性能和更准确的预测。
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引用次数: 0
Smart and Dynamic Indoor Evacuation System (SDIES) 智能动态室内疏散系统(SDIES)
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.304896
Khadidja Bouchenga, Bouabdellah Kechar, Vincent Rodin
The paper presents a complex simulation system for demonstrating the evacuation process in a building, whereby people attempt to escape from a dangerous scenario. It is novel in that it integrates a range of different models: agent-based model, social force model, and psychological behaviour with emotions and norms. The method uses the communication network based on the message queuing telemetry transport protocol that assists to gather information from the environment. The paths are modified using feelings and rule-based expert system. The authors conduct some simulations and conclude with recommendations for management of safer environments.
本文提出了一个复杂的模拟系统,用于演示建筑物中人们试图逃离危险场景的疏散过程。它的新颖之处在于它整合了一系列不同的模型:基于主体的模型,社会力量模型,以及带有情感和规范的心理行为。该方法使用基于消息队列遥测传输协议的通信网络,该协议有助于从环境中收集信息。利用感觉和基于规则的专家系统对路径进行修改。作者进行了一些模拟,最后提出了管理更安全环境的建议。
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引用次数: 0
Encrypted Information transmission by Enhanced Steganography and Image Transformation 基于增强隐写和图像变换的加密信息传输
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.297110
A deep neural network is used to develop a covert communication and textual data extraction strategy based on steganography and picture compression in such work. The original input textual image and cover image are both pre-processed before the covert text-based pictures are separated and implanted into the least significant bit of the cover object picture element using spatial steganography. Following that, stego-images are compressed and transformed(by using Leh Transformation) to provide a higher-quality image while also saving storage space at the sender's end. After then, the stego-image will be transmitted to the receiver over a communication link. At the receiver's end, steganography and compression are then reversed. This work contains a plethora of issues, making it an intriguing subject to pursue. The most crucial component of this task is choosing the right steganography and picture compression technology. The proposed technology, which combines picture steganography with compression and transformation, delivers higher peak signal-to-noise efficiency.
在该工作中,利用深度神经网络开发了一种基于隐写和图像压缩的秘密通信和文本数据提取策略。对原始输入文本图像和封面图像进行预处理,然后利用空间隐写技术将基于文本的隐蔽图像分离并植入到封面对象图像元素的最低有效位。在此之后,隐写图像被压缩和转换(通过使用Leh Transformation),以提供更高质量的图像,同时也节省了发送端存储空间。之后,隐写图像将通过通信链路传输到接收器。在接收端,隐写和压缩被逆转。这项工作包含了大量的问题,使其成为一个有趣的主题。这项任务最关键的部分是选择正确的隐写和图像压缩技术。该技术将图像隐写与压缩和变换相结合,提供了更高的峰值信噪比效率。
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引用次数: 0
Significant Enhancement of Classification Efficiency for Automated Traffic Management System 自动交通管理系统分类效率的显著提高
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.291086
India as a country has 17.7% of the world’s population with the limited availability of land resource which is about only 2.4% of the world’s land. Being a developing nation and such huge population to accommodate, a number of problems can be seen on a daily basis such as high traffic congestion and unmanaged traffic on the roads. Irritating rush, wastage of time and fuel, are being severe hindrance to make the transportation comfortable. As a country, due to availability of limited lands, the only option is to manage the traffic smartly. Hitherto, a number of attempts have been made in this regard, still the statically managed traffic lights can be seen at the junction of roads. So in this work, it was tried to give an easy, but implementable method to manage traffic lights effectively. A hybrid approach based enhanced Convolution Neural Network model was used for the classification and have given the comparison with other model based technique i.e. Support Vector Machine. Our proposed enhanced model produced 91.01% accuracy and it is able to outperform the existing model.
印度作为一个拥有世界17.7%人口的国家,其土地资源有限,仅占世界土地的2.4%。作为一个发展中国家,如此庞大的人口需要容纳,每天都可以看到许多问题,如交通拥堵和道路上的无管理交通。恼人的拥挤,时间和燃料的浪费,严重阻碍了交通的舒适。作为一个国家,由于可用土地有限,唯一的选择是明智地管理交通。迄今为止,在这方面已经做了一些尝试,仍然可以看到静态管理的交通灯在道路的交界处。因此,在本工作中,试图给出一个简单,但可实现的方法来有效地管理交通灯。采用基于混合方法的增强卷积神经网络模型进行分类,并与其他基于模型的技术如支持向量机进行了比较。我们提出的增强模型产生了91.01%的准确率,并且能够优于现有模型。
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引用次数: 0
Distributed Business Process Discovery in Cloud Clusters 云集群中的分布式业务流程发现
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.301213
The processing of big data across different axes is becoming more and more difficult and the introduction of the Hadoop MapReduce framework seems to be a solution to this problem. With this framework, large amounts of data can be analyzed and processed. It does this by distributing computing tasks between a group of virtual servers operating in the cloud or a large group of devices. The mining process forms an important bridge between data mining and business process analysis. Its techniques make it possible to extract information from event reports. The extraction process generally consists of two phases: identification or discovery and innovation or education. Our first task is to extract small patterns from the log effects. These templates represent the implementation of the tracking from a business process report file. In this step we use the available technologies. Patterns are represented by finite state automation or regular expressions. And the final model is a combination of just two different styles.
跨不同轴的大数据处理变得越来越困难,Hadoop MapReduce框架的引入似乎是解决这个问题的一个方法。有了这个框架,就可以分析和处理大量的数据。它通过在云中运行的一组虚拟服务器或一组大型设备之间分配计算任务来实现这一点。挖掘过程是数据挖掘和业务流程分析之间的重要桥梁。它的技术使得从事件报告中提取信息成为可能。提取过程通常包括两个阶段:识别或发现和创新或教育。我们的第一个任务是从对数效应中提取小的模式。这些模板表示从业务流程报告文件跟踪的实现。在这一步中,我们使用可用的技术。模式由有限状态自动化或正则表达式表示。最后一个模型是两种不同风格的组合。
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引用次数: 0
A Novel Algorithm to Detect and Transmit Human-Directed Signboard Image Text to Vehicle Using 5G-Enabled Wireless Networks 一种利用5g无线网络检测并向车辆传输人为导向的招牌图像文本的新算法
Pub Date : 2022-01-01 DOI: 10.4018/ijdai.291084
Digvijay Pandey, Subodh Wairya
The emerging 5G telecommunication technology uses novel aspects to fulfill the challenges of high data rate, ultra-low latency, broad bandwidth with the best user experience for text detection in sign board and thereafter transmission of identified information to the vehicles. This is performed on the images which are amorphous in nature or containing scenarios which are random or that cannot be determined. Detecting and transmission of textsover 5G wireless network from the unstructured images aids in many of the additional applications like Optical Character Recognition (OCR) and 5G technolog such as an eMBB, mMTC, and URLLC for quality of service and customer satisfaction.This approach can be used to alert a driver about any road sign even from a captured video by using 5G wireless network irrespective of the weathercondition or any obstacle which may make sign boards difficult to see for drivers. The algorithm uses Maximally Stable Extremal Regions (MSER) feature detector. The algorithm contains several steps which are briefly described in the paper.
新兴的5G通信技术以新颖的方式应对高数据速率、超低延迟、宽带宽和最佳用户体验的挑战,实现标识牌文本检测,并将识别信息传输到车辆。这是在本质上无定形或包含随机或无法确定的场景的图像上执行的。通过5G无线网络从非结构化图像中检测和传输文本有助于许多其他应用,如光学字符识别(OCR)和5G技术,如eMBB、mMTC和URLLC,以提高服务质量和客户满意度。这种方法可以通过5G无线网络捕捉到的视频提醒驾驶员注意任何路标,而不受天气条件或任何可能使驾驶员难以看到路标的障碍物的影响。该算法采用最大稳定极值区域(MSER)特征检测器。该算法包含几个步骤,本文对其进行了简要描述。
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引用次数: 0
期刊
International Journal of Distributed Artificial Intelligence
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