ASPG Menu
search

American Scientific Publishing Group

Research Feed

Found 3836 matches for "All Articles"

Improving the Regression of Communities and Crime Using Ensemble of Machine Learning Models

 The term” crime prevention” refers to a group of initiatives that work with people, communities, businesses, non-governmental organizations, and all levels of government to address the numerous social and environmental risk factors for crime, disorder, and victimization in communities. In this paper, the authors proposed various regression model for the prediction of communities and crime including decision tree regressor, MLP regressor, SVR, random forest regressor, and K-Neighbors regressor. The communities and crime dataset are used for training and evaluation the proposed model. The results show that there is a decrease in RMSE, MAE, MBE, R, R2, RRMSE, NSE, and WI when compared to the traditional methods.

groups
Hamzah A. Alsayadi mail -
Nima Khodadadi mail -
Sunil Kumar mail
link https://doi.org/10.54216/JAIM.010103

Volume & Issue

Vol. Volume 1 / Iss. Issue 1

Details open_in_new

New Approach of Estimating Sarcasm based on the percentage of happiness of facial Expression using Fuzzy Inference System

Generally, the process of detecting micro expressions takes significant importance because all these expressions reflect the hidden emotions even when the person tried to conceal them. In this paper, a new approach has been proposed to estimate the percentage of sarcasm based on the detected degree of happiness of facial expression using fuzzy inference system. Five regions in a face (right/left brows, right/left eyes, and mouth) are considered to determine some active distances from the detected outline points of these regions. The membership functions in the proposed fuzzy inference system are used as a first step to determine the degree of happiness expression based mainly on the computed distances and then another membership function is used to estimate the percentage of sarcasm according the outcomes of the membership functions in the first step. The proposed approach is validated using some face images which are collected from the SMIC, SAMM, and CAS(ME)2 standard datasets.

groups
Louloua M. AL-Saedi mail -
Methaq Talib Gaata mail -
Mostafa Abotaleb mail -
Hussein Alkattan mail
link https://doi.org/10.54216/JAIM.010104

Volume & Issue

Vol. Volume 1 / Iss. Issue 1

Details open_in_new

Image Classification Based On CNN: A Survey

Computer vision is one of the fields of computer science that is one of the most powerful and persuasive types of artificial intelligence. It is similar to the human vision system, as it enables computers to recognize and process objects in pictures and videos in the same way as humans do. Computer vision technology has rapidly evolved in many fields and contributed to solving many problems, as computer vision contributed to self-driving cars, and cars were able to understand their surroundings. The cameras record video from different angles around the car, then a computer vision system gets images from the video, and then processes the images in real-time to find roadside ends, detect other cars, and read traffic lights, pedestrians, and objects. Computer vision also contributed to facial recognition; this technology enables computers to match images of people’s faces to their identities. which these algorithms detect facial features in images and then compare them with databases. Computer vision also play important role in Healthcare, in which algorithms can help automate tasks such as detecting Breast cancer, finding symptoms in x-ray, cancerous moles in skin images, and MRI scans. Computer vision also contributed to many fields such as image classification, object discovery, motion recognition, subject tracking, and medicine. The rapid development of artificial intelligence is making machine learning more important in his field of research. Use algorithms to find out every bit of data and predict the outcome. This has become an important key to unlocking the door to AI. If we had looked to deep learning concept, we find deep learning is a subset of machine learning, algorithms inspired by structure and function of the human brain called artificial neural networks, learn from large amounts of data. Deep learning algorithm perform a task repeatedly, each time tweak it a little to improve the outcome. So, the development of computer vision was due to deep learning. Now we'll take a tour around the convolution neural networks, let us say that convolutional neural networks are one of the most powerful supervised deep learning models (abbreviated as CNN or ConvNet). This name "convolutional" is a token from a mathematical linear operation between matrixes called convolution. CNN structure can be used in a variety of real-world problems including, computer vision, image recognition, natural language processing (NLP), anomaly detection, video analysis, drug discovery, recommender systems, health risk assessment, and time-series forecasting. If we look at convolutional neural networks, we see that CNN are similar to normal neural networks, the only difference between CNN and ANN is that CNNs are used in the field of pattern recognition within images mainly. This allows us to encode the features of an image into the structure, making the network more suitable for image-focused tasks, with reducing the parameters required to set-up the model. One of the advantages of CNN that it has an excellent performance in machine learning problems. So, we will use CNN as a classifier for image classification. So, the objective of this paper is that we will talk in detail about image classification in the following sections.

groups
Ahmed A. Elngar mail -
Mohamed Arafa mail -
Amar Fathy mail -
Basma Moustafa mail -
Omar Mahmoud mail -
Mohamed Shaban mail -
Nehal Fawzy mail
link https://doi.org/10.54216/JCIM.060102

Volume & Issue

Vol. Volume 6 / Iss. Issue 1

Details open_in_new

Explaining feature detection Mechanisms: A Survey

Feature detection, description and matching are essential components of various computer vision applications; thus, they have received a considerable attention in the last decades. Several feature detectors and descriptors have been proposed in the literature with a variety of definitions for what kind of points in an image is potentially interesting (i.e., a distinctive attribute). This chapter introduces basic notation and mathematical concepts for detecting and describing image features. Then, it discusses properties of perfect features and gives an overview of various existing detection and description methods. Furthermore, it explains some approaches to feature matching. Finally, the chapter discusses the most used techniques for performance evaluation of detection algorithms.

groups
Ahmed A. Elngar mail -
Mohamed Arafa mail -
Mustafa Marouf mail -
Mahmoud Ahmed mail -
Nehal Fawzy mail
link https://doi.org/10.54216/JCIM.060103

Volume & Issue

Vol. Volume 6 / Iss. Issue 1

Details open_in_new

A Survey on Machine Learning Techniques for Supply Chain Management

Machine learning arose from the increasing ability of machines to handle large amounts of data over the last two decades, and some machines could also identify hidden patterns and complicated associations that humans couldn't, allowing them to make rational and precise decisions, especially for disruptive and discontinuous data. In several areas of decision-making, machines could produce more reliable outcomes than humans and have already begun to replace them. Machine learning, which is widely recognized as a breakthrough technology, has recently made significant progress in improving supply chain management processes and efficiency. From planning to delivery, machine learning may be applied at different stages of the supply chain management process. Machine learning types are supervised, unsupervised, reinforcement. Each type has many tools which are discussed below in detail. This paper presents a detailed survey on machine learning techniques for supply chain management including supply chain and supply chain management interpretation, machine learning definition, its types, and some algorithms that belong to it.

groups
Amal F.Abd El-Gawad mail -
Shereen Zaki mail -
Esraa Kamal mail
link https://doi.org/10.54216/AJBOR.020103

Volume & Issue

Vol. Volume 2 / Iss. Issue 1

Details open_in_new

A Review On Some Neutrosophic Algebraic Linear Structures

This paper is dedicated to review some of basic concepts in neutrosophic linear algebra and its generalizations, especially neutrosophic vector spaces, refined neutrosophic and n-refined neutrosophic vector spaces. Also, this work gives the interested reader a strong background in the study of neutrosophic matrix theory and n-refined neutrosophic matrix theory. We study elementary properties of these cocepts such as Kernel, AH-Quotient, and dimension.  

groups
Malath F. Alaswad mail
link https://doi.org/10.54216/IJNS.140204

Volume & Issue

Vol. Volume 14 / Iss. Issue 2

Details open_in_new

The Viola-Jones Face Detection Algorithm Analysis: A Survey

In this paper, we analysis the Viola-Jones algorithm, the most real-time face detection system has been used. It is consisting from three main concepts to enable a robust detection: the integral image for Haar feature computation, Adaboost for selecting feature and cascade to make resource allocation more efficient. Here we propose each stage starting from Integral image to the end with Cascading and some of algorithmic description for stages. The Viola-Jones algorithm gives multiple detections, a post-processing step which reduce detection redundancy using Adaboost and cascading.

groups
Ahmed A. Elngar mail -
Mohamed Arafa mail -
Abd El Rahman Ahmed Naeem mail -
Ahmed Rushdy Essa mail -
Zahra Ahmed shaaban mail
link https://doi.org/10.54216/JCIM.060201

Volume & Issue

Vol. Volume 6 / Iss. Issue 2

Details open_in_new

Parasitic overview on different key management schemes for protection of Patients Health Records

The main goal of HIPAA (Health Insurance Portability and Accountability Act) is to protect health information of individuals against access without consent or authorization. Security and privacy are the main issues in HIPAA. A compliant key management solution is used to reduce harm and risk while providing cryptographic mechanisms. Using ECC (Elliptic Curve Cryptography) we ensure more security for access of patient’s health records. This provides same level of security for access of patient’s health records. Patient’s health Information is stored in RFID cards. Finally, the proposed method ensures higher level of security than other existing cryptographic techniques. ECC provides more security even with small key sizes. Proposed scheme describes the various counter measures for improving security and a key recovery mechanism for the protection of keys.

groups
Shibin David mail -
K. Martin Sagayam mail -
Ahmed A. Elngar mail
link https://doi.org/10.54216/JCIM.060202

Volume & Issue

Vol. Volume 6 / Iss. Issue 2

Details open_in_new

An Efficient Smartphone Assisted Indoor Localization with Tracking Approach using Glowworm Swarm Optimization Algorithm

Presently, a precise localization and tracking process becomes significant to enable smartphone-assisted navigation to maximize accuracy in the real-time environment. Fingerprint-based localization is the commonly available model for accomplishing effective outcomes. With this motivation, this study focuses on designing efficient smartphone-assisted indoor localization and tracking models using the glowworm swarm optimization (ILT-GSO) algorithm. The ILT-GSO algorithm involves creating a GSO algorithm based on the light-emissive characteristics of glowworms to determine the location. In addition, the Kalman filter is applied to mitigate the estimation process and update the initial position of the glowworms. A wide range of experiments was carried out, and the results are investigated in terms of distinct evaluation metrics. The simulation outcome demonstrated considerable enhancement in the real-time environment and reduced the computational complexity. The ILT-GSO algorithm has resulted in an increased localization performance with minimal error over the recent techniques.

groups
Mohammad Alshehri mail
link https://doi.org/10.54216/JCIM.060203

Volume & Issue

Vol. Volume 6 / Iss. Issue 2

Details open_in_new

Crop Recommendation Using Machine Learning

The population of India is over one billion. Nearly 65 percent of the population of India lives in villages with the main occupation being agriculture. The diverse climatic conditions in the country result in the production of a large number of agricultural items. Many surveys have proved that the suicide rate of farmers is proliferating over years due to the selection of the wrong crop resulting in less yield. In some areas, farmers lack information about the composition of soil and weather conditions and may choose the wrong crop to sow which results in lesser yield. Production of crops depends on geographical parameters like humidity, rainfall, and properties of soil such as pH, and NPK content. Integration of technology with agriculture helps the farmer to improve his production. The main goal of agricultural planning is to achieve the maximum yield rate of crops by using a limited number of land resources. This paper mainly focuses on recommending the appropriate crop using ML Algorithms ( Decision Tree, Naive Bayes, Random Forest ) based on soil composition and weather conditions to maximize the yield of the farm and increase the economic condition of India’s farmers.

groups
Akshita Waldia mail -
Pragati Garg mail -
Priyanka Garg mail -
Rachna Tewani mail -
Arun Kumar Dubey mail -
Anurag Agrawal mail
link https://doi.org/10.54216/FPA.060203

Volume & Issue

Vol. Volume 6 / Iss. Issue 2

Details open_in_new