Preface
Page: ii-iii (2)
Author: Hemachandran K., Raul V. Rodriguez, Umashankar Subramaniam and Valentina Emilia Balas
DOI: 10.2174/9789815165739123010002
Artificial General Intelligence; Pragmatism or an Antithesis?
Page: 1-25 (25)
Author: K. Ravi Kumar Reddy*, K. Kailash and Y. Vani
DOI: 10.2174/9789815165739123010004
PDF Price: $15
Abstract
Artificial intelligence is promoted by means of incomprehensible advocacy
through business majors that cannot easily be equated with human consciousness and
abilities. Behavioral natural systems are quite different from language models and
numeric inferences. This paper reviews through centuries of evolved human
knowledge, and the resolutions as referred through the critics of mythology, literature,
imagination of celluloid, and technical work products, which are against the intellect of
both educative and fear mongering. Human metamorphic abilities are compared against
the possible machine takeover and scope of envisaged arguments across both the
worlds of ‘Artificial Intelligence’ and ‘Artificial General Intelligence’ with perpetual
integrations through ‘Deep Learning’ and ‘Machine Learning’, which are early
adaptive to ‘Artificial Narrow Intelligence’ — a cross examination of hypothetical
paranoid that is gripping humanity in modern history. The potentiality of a highly
sensitive humanoid and sanctification to complete consciousness at par may not be a
near probability, but social engineering through the early stages in life may indoctrinate
biological senses to a much lower level of ascendancy to Artificial Narrow Intelligence
— with furtherance in swindling advancement in processes may reach to a pseudo-Artificial Intelligence {i}. There are no convincing answers to the discoveries from
ancient scriptures about the consciousness of archetypal humans against an anticipated
replication of a fulfilling Artificial Intelligence {ii}. Human use of lexicon has been the
focal of automata for the past few years and the genesis for knowledge, and with the
divergence of languages and dialects, scores of dictionaries and tools that perform
bidirectional voice and text — contextual services are already influencing the lives, and
appeasement to selective humanly incidentals is widely sustainable today {iii}.
Synthesizing and harmonizing a pretentious labyrinthine gizmo is the center of human
anxiety, but only evaluative research could corroborate that tantamount to genetic
consciousness.
Applications of Artificial Intelligence in Robotics
Page: 26-36 (11)
Author: Pingili Sravya*, Hemachandran K. and Ezendu Ariwa
DOI: 10.2174/9789815165739123010005
PDF Price: $15
Abstract
Artificial Intelligence is a theory of the cognitive perspective in the province
with robotics to human communication with the perception of action. The ability to
develop computer systems would require human intelligence to perform tasks [1].
Artificial Intelligence plays a prominent role in robotics in providing effective
analytical business solutions like human behavior in the real world. The common root
of artificial intelligence and robotics has a scientific interaction that transforms
technological improvement in robotics application and utilization and has a potential
for future robotics in various applications and AI technologies. The study of the
creation of intelligent robots in Artificial Intelligence is an entity for different
objectives and applications. It is known to many people that artificial intelligence is a
subset of robotics. Robots have human-like behavior by which they can perform tasks
like a human if enabled with Artificial Intelligence.
Smart Regime with IoT application using AI
Page: 37-55 (19)
Author: Sri Rama Sai Pavan Kumar*, Guda Vineeth Reddy, Sailaja Maggidi and Rajesh Kumar K. V.
DOI: 10.2174/9789815165739123010006
PDF Price: $15
Abstract
The Internet of Things (IoT) has made it possible for previously
unconnected items, such as vehicle engines, to be connected to the network, leading to
the emergence of numerous active data streams. The IoT and big data analytics have
made considerable strides, opening up intriguing new possibilities for medical and
healthcare solutions. Many organisations still struggle with the usage of AI and ML
technology when attempting to expand their digital transformation programmes and
utilise IoT data.
The most current trends involve modifying IoT data for smart applications using
artificial intelligence techniques. Numerous apps use data science and analytics to
extract conclusions from gigabytes of data. However, these applications do not deal
with the issue of constantly identifying patterns in IoT data. The introduction of the IoT
and the cloud has further enhanced things by offering smart business recommendations
as well as insights into how people operate and how lives are changing. We discuss a
variety of AI capabilities and how to apply them to IoT devices in Hands-On AI for
IoT.
The logic-based substrate provides low energy footprints and higher cognitive accuracy
during training and inference, which is a crucial requirement for effective AI with long
operating life. The use of AI in the industrial sector has enormous potential. However,
it frequently necessitates expensive and resource-intensive machine learning
professionals as well as in-depth knowledge of complex statistics and how they are
implemented in practical use cases.
Artificial Intelligence in Marketing and Operations
Page: 56-71 (16)
Author: Gaddam Venkat Shobika*, Sourav Chakraborty, Varadharaja Krishna, Dibya Nandan Mishra and Pranay Kumar
DOI: 10.2174/9789815165739123010007
PDF Price: $15
Abstract
In the last 20 years, artificial intelligence (AI) and machine learning (ML)
applications have advanced at an unmatched rate. The development of robotics and
automation has been driven by AI technology, and this has substantial effects on
practically every facet of the business, particularly supply chain operations. Smart
technologies allowing real-time automatic data collection, analysis, and prediction have
been widely incorporated into supply chains. We examine the current uses of AI in
marketing and operations management (OM) and supply chain management in this
study (SCM). Since these three industries combined account for the majority of
business-related AI advancements as well as expanding problem domains, we focus
specifically on innovations in healthcare, manufacturing, and retail operations. We go
over the main obstacles and potential uses of AI in those sectors. We also talk about
current research.
Data Insights by Using Data Visualization and Exploration
Page: 72-83 (12)
Author: Choppala Swathi Priya*, Sai Santosh Potnuru, Ishank Jha, Hemachandran K. and Chinna Swamy Dudekula
DOI: 10.2174/9789815165739123010008
PDF Price: $15
Abstract
Any effort to make data more understandable by presenting it visually falls
under the wide definition of data visualization. The graphic depiction of quantitative
information is called data visualization. In other words, data visualizations turn big and
small data sets into images that the brain can process more quickly. Users using data
visualization can gain insight into vast volumes of data. They can use it to find new
patterns and data mistakes. Users can concentrate on areas that show progress or
warning signs by making sense of these patterns. This procedure then advances the
business. Surprisingly frequently, data representations assume the well-known shape of
charts and graphs in our daily lives. It can be used to uncover unknown facts and
trends. Good data visualizations result when communication, data science, and design
work together. When done properly, data visualizations provide important insights into
huge, complex data sets in simple, understandable ways. Data visualization is the
graphic depiction of information and data. Trends, outliers, and patterns in data are
easy to spot and comprehend with the use of data visualization tools, which employ
visual components like charts, graphs, and maps. Furthermore, it enables employees or
business owners to convey information to non-technical audiences without
misunderstanding them. In the world of big data, it is essential to have access to tools
and technology for data visualization to analyze vast volumes of data and make data-driven decisions. We will discuss data visualization, its significance, data visualization
technologies, and other topics in this article.
Application of Computer Vision to Laboratory Experiments
Page: 84-92 (9)
Author: P.K. Thiruvikraman*, Devendra Dheeraj Gupta Sanagapalli and Simran Sahni
DOI: 10.2174/9789815165739123010009
PDF Price: $15
Abstract
Computer vision has been applied in many fields. We demonstrate some
simple applications of computer vision to improve the accuracy of laboratory
experiments. The techniques used require only a camera in a mobile phone. Individual
frames can be extracted from the video using PYTHON/MATLAB. Further processing
of the images can be used to accurately measure the time period of oscillation or
rotational time periods. The techniques described can be easily extended to a variety of
fields.
Violence Detection for Smart Cities using Computer Vision
Page: 93-105 (13)
Author: Jyoti Madake*, Shripad Bhatlawande, Abhishek Rajput, Aditya Rasal, Sambodhi Umare, Varun Shelke and Swati Shilaskar
DOI: 10.2174/9789815165739123010010
PDF Price: $15
Abstract
There is a need for developing deep learning solutions to analyze videos to
identify any violence being present. This paper proposes a method for the detection of
the presence of violent activities in videos using Deep Neural Networks. Recently there
has been a rapid development happening in the field of Deep Neural networks, but the
number of solutions that have been developed for violence detection is very few. The
proposed solution will play a major role in transforming the way law enforcement
works and support the government’s initiative to make cities smarter. The model is
built using CNN for video frame feature extraction and LSTM to capture localized
features present in the video frames. The LSTM extracts the localized features using
the spatiotemporal relationship between the video frames. The local motion present in
the video is analyzed. This work focuses on accuracy and fast response time. The
performance was evaluated on the hockey fight dataset to detect violent activities.
A Big Data Analytics Architecture Framework for Oilseeds and Textile Industry Production and International Trade for Sub-Saharan Africa (SSA)
Page: 106-139 (34)
Author: Gabriel Kabanda*
DOI: 10.2174/9789815165739123010011
PDF Price: $15
Abstract
Among the most revolutionary technologies are Big Data Analytics,
Artificial Intelligence (AI) and robotics, Machine Learning (ML), cybersecurity,
blockchain technology, and cloud computing. The research was focused on how to
create a Big Data Analytics Architecture Framework to increase production capability
and global trade for Sub-Saharan Africa's oilseeds and textile industries (SSA).
Legumes, shea butter, groundnuts, and soybeans are significant crops in Sub-Saharan
Africa (SSA) because they offer a range of advantages in terms of the economy,
society, and the environment. The infrastructure, e-commerce, and disruptive
technologies in the oilseeds and textile industries, as well as global e-commerce, all
demand large investments. The pragmatic worldview served as the foundation for the
Mixed Methods Research technique. This study employed a review of the literature,
document analysis, and focus groups. For the oilseeds and textile sectors in SSA, a Big
Data analytics architectural framework was created. It supports E-commerce and is
based on the Hadoop platform, which offers the analytical tools and computing power
needed to handle such massive data volumes. The low rate of return on investments
made in breeding, seed production, processing, and marketing limits the
competitiveness of the oil crop or legume seed markets.
A Design of Lighting and Cooling System for Museum and Heritage Sites
Page: 140-149 (10)
Author: Amrapali Nimsarkar, Piyush Kokate*, Mamta Tembhare and Harikumar Naidu
DOI: 10.2174/9789815165739123010012
PDF Price: $15
Abstract
Museums, buildings and heritage sites need artificial light at night time in
darker places. At many museums, old lighting is used to illuminate the central gallery
section or paintings as well. There are old lighting, including Metal Halide,
Incandescent Lamp, Sodium Vapor, CFL, etc., that consume more electricity and
produce heat in the indoor environment, causing damage to the artwork, walls, and
paintings. No standard guidelines or methodologies have been adopted by our country
for lighting at the museums and archeological sites to maintain an elegant look during
the day-night time. It is intended to expand in this arena due to a lack of knowledge in
the field of lighting at museums as well as at heritage sites.
This paper discusses the correlation of lumen and temperature on different materials by
using an LED lighting module with fiber optic cable. ANOVA method was used to
correlate the dependent parameters like lumen and temperature concerning a change in
distance and time on a material. We have used a lighting module that helps to prevent
damage to the objects and emits negligible heat in the environment so that visitors can
easily visualize the objects with proper lux level.
Predict Network Intruder Using Machine Learning Model and Classification
Page: 150-171 (22)
Author: Chithik Raja*, Hemachandran K., V. Devarajan and K. Jarina Begum
DOI: 10.2174/9789815165739123010013
PDF Price: $15
Abstract
The massive number of sensors deployed in IoT generates humongous
volumes of data for a broad range of applications such as smart home, smart healthcare,
smart manufacturing, smart transportation, smart grid, smart agriculture etc. Analyzing
such data in order to facilitate enhanced decision making and increase productivity and
accuracy is a critical process for businesses and life improving paradigm. Machine
Learning would play a vital role in creating smarter techniques to predict the intruder
from the dataset. It has shown remarkable results in different fields, including Network
security, image recognition, information retrieval, speech recognition, natural language
processing, indoor localization, physiological and psychological state detection, etc. In
this regard, intrusion detection is becoming a research focus in the field of information
security. In our experiment, we used the CICIDS2017 data set to predict the Network
Intruder. The Canadian Institute of Cyber Security released the data set CICIDS-2017,
which consists of eight separate files and includes five days’ worth of normal cum
abnormal network packet data. The goal of this research is to examine relevant and
significant elements of large network packets in order to increase network packet attack
detection accuracy and reduce execution time. We choose important and meaningful
features by applying Information Gain, ranking and grouping features based on little
weight values on the CICIDS-2017 dataset; and then use Random Forest (RF), Random
Tree (RT), Naive Bayes (NB), Bayes Net (BN), and J48 classifier algorithms. The
findings of the experiment reveal that the amount of relevant and significant features
produced by Information Gain has a substantial impact on improving detection
accuracy and execution time. The Random Forest method, for example, has the best
accuracy with 0.14% of negative results when using 22 relevant selected features,
whereas the Random Tree classifier algorithm has a higher accuracy with 0.13% of
negative results when using 52 relevant selected features but takes a longer execution
time.
Machine Learning Based Crop Recommendation System
Page: 172-185 (14)
Author: Keerti Adapa and Sudheer Hanumanthakari*
DOI: 10.2174/9789815165739123010014
PDF Price: $15
Abstract
Agriculture is very important in the Indian economy. Nowadays, due to the
change in climate and the increase in global warming, the weather is an unpredictable
variable. So, the most common issue that Indian farmers encounter is that they fail to
identify the best-suited and appropriate crop for their soil using conventional methods.
As a result, they experience a significant drop in production. This is a big problem in a
country where farming employs over 58 percent of the population and results in low
crop production. To overcome this issue, a model is built using machine learning which
has a better system to guide the farmers, and it is a modern agricultural strategy for
selecting the best crop by considering all the factors like nitrogen, phosphorus,
potassium percentages, temperature, humidity, rainfall, and ph value. This paper
proposes the use of machine learning techniques such as logistic regression, decision
tree, KNN (k-Nearest Neighbours) and Naive Bayes to determine the best-suited crop
based on attributes of soil and environmental factors. In the end, an accuracy of 96.36
percent from the logistic regression, 99.54 percent from the decision tree, 98.03 percent
from the k-nearest neighbours and 99.09 percent from the naive Bayes is obtained,
resulting in the decision tree having the highest accuracy with 99.54 percent. This
paper gives an extensive Exploratory Data Analysis (EDA) on the Crop
recommendation Dataset and builds an appropriate Machine Learning Model that will
help farmers predict their suitable crops based on their parameters.
Artificial Neural Networks based Distributed Approach for Heart Disease Prediction
Page: 186-196 (11)
Author: Thakur Santosh*, Hemachandran K., Sandip K. Chourasiya, Prathyusha Pujari, K. Vishal and B. R. S. S. Sowjanya
DOI: 10.2174/9789815165739123010015
PDF Price: $15
Abstract
A recent study shows that almost 30% of total global deaths are caused by
heart disease. These days precise diagnosis related to heart disease is very difficult. The
doctor advises patients to take various tests for diagnosis, which is a very costly and
time-consuming process as medical databases are large and cannot be processed
quickly. A new approach has been proposed to predict heart disease from historical
data sets. In this chapter, heart disease possibilities in patients are predicted with the
help of neural networks on distributed computing. Feature selection was applied to the
dataset to get better results and to increase the performance. Feature selection reduces
the number of attributes from the dataset and only provides the necessary attributes,
which directly reduces the number of tests required for the diagnosis.
Reinforcement Learning Based Automated Path Planning in Garden Environment using Depth - RAPiG-D
Page: 197-208 (12)
Author: S. Sathiya Murthi*, Pranav Balakrishnan, C. Roshan Abraham and V. Sathiesh Kumar
DOI: 10.2174/9789815165739123010016
PDF Price: $15
Abstract
Path planning by employing Reinforcement Learning is a versatile
implementation that can account for the ability of a robot to autonomously map any
unknown environment. In this paper, such a hardware implementation is proposed and
tested by making use of the SARSA algorithm for path planning and by utilizing
stereovision for depth estimation based obstacle detection. The robot is tested in a cell-based environment – 3x3 with 2 obstacles. The goal is to map the environment by
detecting and mapping the obstacles and finding the ideal route to the destination. The
robot starts at one end of the environment and runs through it for a specified number of
episodes, and it is observed that the robot can accurately identify and map obstacles
and find the shortest path to the destination in under 10 episodes. Currently, the
destination is a fixed point and is taken as the other diagonal end of the environment.
Analysis of Human Gait by Selecting Anthropometric Data Based on Machine Learning Regression Approach
Page: 209-219 (11)
Author: Nitesh Singh Malan* and Mukul Kumar Gupta*
DOI: 10.2174/9789815165739123010017
PDF Price: $15
Abstract
This paper aims to elucidate a method to simulate human gait, which can
help design a fully functional exoskeleton to rehabilitate the human lower limb. We
present a method to calculate the forces and moments of each lower limb joint using
human anthropometric parameters and free body diagrams. Various forces and moment
of forces of lower limb joints have been calculated. The anthropometric data is
evaluated using the linear regression approach. Also, in this work, we have simulated
the normal human walking pattern. The forces and moments acting on lower limb
joints are calculated in horizontal and vertical directions, and the human gait was
simulated for a speed of 1.8m/s. The estimated results can be used as input parameters
for the development of an exoskeleton for the rehabilitation of the human lower limb.
Subject Index
Page: 220-224 (5)
Author: Hemachandran K., Raul V. Rodriguez, Umashankar Subramaniam and Valentina Emilia Balas
DOI: 10.2174/9789815165739123010018
Introduction
Artificial Intelligence and Knowledge Processing: Methods and Applications demonstrates the transformative power of Artificial Intelligence (AI) in our lives. The book is a collection of 14 edited reviews that cover a wide range of topics showcasing the application of AI and machine learning to create knowledge, and facilitate different processes. The book starts by illuminating how AI is employed in robotics, IoT, marketing, and operations. It showcases how AI extracts insights from big data, optimizes museum management, and empowers automated garden path planning using reinforcement learning. The book also explores how AI can be used to predict heart disease using artificial neural networks. Furthermore, the book underscores how AI predicts crop suitability, manages crop systems, and can even help to detect violence in using computer vision. Chapters highlight specific techniques or systems such as recommendation systems and reinforcement learning where appropriate. Key Features: · Showcases a wide range of AI applications · Bridges theory and practice with real-word insights · Uses accessible language to explain complex AI concepts · Includes references for advanced readers This book is intended as a guide for a broad range of readers who want to learn about AI applications and the profound influence it has on our lives.