Book Volume 1
Preface
Page: i-i (1)
Author: Satvik Vats, Vikrant Sharma, Dibyahash Bordoloi and Satya Prakash Yadav
DOI: 10.2174/9789815305364124010001
Redefining Human-AI Interactions: Unveiling ChatGPT's Profound Emotional Understanding
Page: 1-19 (19)
Author: Priyanshu Rawat*, Madhvan Bajaj, Satvik Vats and Vikrant Sharma
DOI: 10.2174/9789815305364124010003
PDF Price: $15
Abstract
The AI-powered conversational agent known as ChatGPT has received
significant attention due to its exceptional performance in natural language processing
tasks and its exponential growth in user base. While ChatGPT has demonstrated its
ability to generate knowledge across various domains, its proficiency in identifying and
expressing emotions remains uncertain. Recognizing and understanding emotional
states, both in oneself and others, is widely acknowledged as a crucial aspect of mental
health, referred to as emotional awareness (EA). The present study employed the
Levels of Emotional Awareness Scale (LEAS) as a standardized and task-oriented
metric to assess the efficacy of ChatGPT in addressing twenty distinct scenarios. The
present investigation sought to conduct a comparative analysis of ChatGPT's
proficiency in emotional awareness (EA) vis-à-vis the general populace, ascertained
through prior scholarly inquiry. A follow-up evaluation was conducted one month later
to assess potential improvements in ChatGPT's emotional intelligence algorithm over
time. Additionally, licensed psychologists independently evaluated the appropriateness
of ChatGPT's EA responses in the given context. The preliminary evaluation indicates
that ChatGPT exhibits a considerably greater level of proficiency in all aspects of the
LEAS in comparison to the general populace, as evidenced by a Z score of 2.79. The
post-evaluation analysis revealed a significant enhancement in the operational
efficiency of ChatGPT, exhibiting a close proximity to the highest achievable LEAS
score, Z score = 4.15. Furthermore, ChatGPT exhibited a statistically significant level
of precision, achieving a score of 9.7 out of 10. These findings suggest that ChatGPT
exhibits a high level of proficiency in generating appropriate responses for EA, and its
effectiveness may significantly improve over time. The results have important
implications in both theoretical and practical contexts. Integrating ChatGPT into
cognitive training programs could hold potential for addressing executive attention
deficits in clinical populations. Moreover, ChatGPT's EA-like capabilities can aid in
the assessment and diagnosis of psychiatric disorders, as well as advancing our
understanding of emotional language. Additional investigation is required to
comprehensively scrutinize the potential advantages and disadvantages of ChatGPT
and optimize its application for advancing psychological well-being.
Neuromorphic Computing: Forging a Link between Artificial Intelligence and Neurological Models
Page: 20-56 (37)
Author: Madhvan Bajaj*, Priyanshu Rawat, Vikrant Sharma and Satvik Vats
DOI: 10.2174/9789815305364124010004
PDF Price: $15
Abstract
By emulating the design and operation of the human brain, neuromorphic
computing promises to close the gap between artificial intelligence and brain-inspired
technologies. Researchers create specialized hardware and software to mimic the
brain's processing speed, capacity for learning, and energy economy. This chapter
examines the drivers, difficulties, and prospective uses of neuromorphic computing,
with a focus on robotics, sensory processing, and pattern recognition. The entire
potential of brain-inspired systems will be unlocked by ongoing research,
revolutionizing the field of AI and paving the way for the creation of cutting-edge,
intelligent machines that follow the principles of the brain.
Fingerprint Recognition System Study
Page: 57-71 (15)
Author: Prerna*, Rishika Yadav, Shashank Awasthi, Satya Prakash Yadav and Prashant Upadhyay
DOI: 10.2174/97898153053641240100005
PDF Price: $15
Abstract
Due to its broad use in fields including law enforcement, access control, and
personal identity, fingerprint recognition systems have attracted a lot of interest in
recent years. This paper offers a thorough examination of fingerprint recognition
systems, concentrating on their underlying ideas, methods, and performance
assessment. The study starts by giving a general review of the biometric identification
sector while highlighting how distinct and stable fingerprints are as a trustworthy form
of personal identification. Highlighting significant turning points and developments, it
examines the historical evolution of fingerprint identification systems from manual
fingerprint analysis to automated digital systems. This research seeks to increase the
knowledge of biometric identification technologies by offering a thorough review of
fingerprint recognition systems. Researchers, professionals, and politicians interested in
the creation and deployment of safe and effective fingerprint recognition systems for a
variety of applications can benefit from the discoveries and insights offered.
Glaucoma Detection with Retinal Fundus Images
Page: 72-87 (16)
Author: Shreshtha Mehta*, Amit Gupta, Deepti Sahu, Pawan Kumar Singh and Satya Prakash Yadav
DOI: 10.2174/9789815305364124010006
PDF Price: $15
Abstract
This paper discusses numerous methods for glaucoma detection. Because of
its impact on the optic nerve and the loss of ganglion cells, which eventually results in
vision loss, glaucoma has emerged as the leading cause of blindness worldwide. In this
article, we provide a few methods for recognizing glaucoma in its earliest stages, which
can prevent irreversible damage to a person's vision. We explore ROI (region of
interest), optic cup and disc ratio, LSACM, and LSACM-SP techniques in this
research, all of which help us achieve significant segmentation results. The
development of diagnostic methods for several eye illnesses began with the discovery
of the “optical disc (OD)”. To produce circular OD milestones, this methodology
rounds extrinsic morphology and detecting methodologies. The OD's pixels must be
provided as raw data. To achieve this, a methodology based on the chosen voting
method is devised.
Detection of Lung Cancer using Image Processing Methods
Page: 88-103 (16)
Author: Shreshtha Mehta*, Dibyahash Bordoloi, Satya Prakash Yadav, Pawan Kumar Singh and Prashant Upadhyay
DOI: 10.2174/9789815305364124010007
PDF Price: $15
Abstract
The largest cause of cancer-related fatalities globally is lung cancer. Lung
cancer treatment results and survival rates can be considerably enhanced by early
identification and diagnosis. Image processing techniques have attracted attention as
useful tools for the early identification and diagnosis of lung cancer because of
improvements in medical imaging technology. This review study offers a thorough
examination of the various image-processing methods used in lung cancer diagnosis.
The importance of early detection and the difficulties in conventional diagnosis
techniques are covered in the first section of the paper. The potential of image
processing methods to solve these issues and boost diagnostic precision is then
highlighted. The review discusses several feature extraction, segmentation, and
classification techniques used in lung cancer diagnosis. The precise detection and
delineation of lung tumors from computed tomography (CT) scan or chest X-ray
images is investigated using image segmentation algorithms. To get pertinent data and
traits from the segmented tumor areas, feature extraction techniques are next examined.
In the end, classification methods are looked at for separating benign and malignant
tumors based on the data retrieved. The research also examines the combination of
image processing methods with machine learning and deep learning algorithms for
improved lung cancer diagnosis. It draws attention to the benefits and drawbacks of
these algorithms in terms of increasing diagnostic precision and lowering false-positive
or false-negative outcomes. The study concluded with a discussion of the potential
applications of image-processing techniques in the diagnosis of lung cancer. It
emphasizes how computer-aided diagnostic methods and artificial intelligence have the potential to revolutionize the detection and treatment of lung cancer. In conclusion, this
paper offers a thorough overview of the image processing techniques used in lung
cancer diagnosis. It clarifies how these methods could aid in the early detection of lung
cancer, improve the design of the appropriate course of therapy, and eventually
improve patient outcomes.
Web User Access Path Prediction using Recognition with Recurrent Neural Network
Page: 104-116 (13)
Author: Prerna, Sushant Chamoli*, Pawan Kumar Singh, Sansar Singh Chauhan and Satya Prakash Yadav
DOI: 10.2174/9789815305364124010008
PDF Price: $15
Abstract
This research introduces a novel technique for predicting web user access
paths based on Recognition with Recurrent Neural Network (RNN). The study focuses
on utilizing user access paths as the primary research goal and explores the application
of RNN in addressing the path forecasting problem. A network model is developed and
examined for predicting access paths by enhancing the feature layer. This approach
effectively leverages contextual information from user conversation sequences, learns
and memorizes user access patterns, and obtains optimal model parameters through
training data analysis. Consequently, it enables accurate prediction of the user's next
access path. Theoretical analysis and experimental results demonstrate the higher
efficiency and improved accuracy of path forecasting achieved by this technique,
making it well-suited for solving web user access path prediction problems.
News Event Detection Methods Based on Big Data Processing Techniques
Page: 117-129 (13)
Author: Karan Purohit*, Rishabh Saklani, Veena Bharti, Mahaveer Singh Naruka, Satya Prakash Yadav and Upendra Singh Aswal
DOI: 10.2174/9789815305364124010009
PDF Price: $15
Abstract
This research presents a novel approach for detecting news events using big
data processing techniques. The proposed method involves four key steps: crawling
news data from various news portal websites, filtering noise and removing duplicates,
performing named entity recognition and text summarization, detecting media events
through text clustering and feature extraction, and finally displaying the detected news
topics through an intuitive interface. By leveraging static and dynamic web page
crawler technologies, this method harnesses the power of big data to effectively
identify and track news events. Experimental results demonstrate the effectiveness of
the proposed approach in accurately detecting and presenting news topics.
Rolling-Type Collaborative Training for False Comment Identification: Enhancing Accuracy through Multi-Characteristic Fusion
Page: 130-141 (12)
Author: Sandeep Kumar*, Shashank Awasthi, Nilotpal Pathak, Amit Gupta and Rajesh Pokhariyal
DOI: 10.2174/9789815305364124010010
PDF Price: $15
Abstract
This research presents a false comment identification method based on
rolling-type collaborative training. False comments pose a significant challenge in
online platforms, impacting credibility and user experiences. The proposed method
effectively utilizes unlabeled samples to assist model learning and integrates multiple
characteristics, including emotion and text representation, to enhance the identification
performance. The method involves obtaining comment text and determining its content
characteristics, as well as obtaining reviewer information and determining their
behavior characteristics. By combining these characteristics, the method performs false
comment identification and outputs the identification result. Experimental results show
that the proposed method achieves a 3.5% improvement in accuracy compared to
traditional methods. The rolling-type collaborative training approach demonstrates the
potential to enhance the reliability of comment evaluation systems and combat the
spread of false information in online platforms.
A Neural Network Study of Face Recognition
Page: 142-157 (16)
Author: Rishabh Saklani*, Karan Purohit, Santosh Kumar Upadhyay, Prashant Upadhyay, Satya Prakash Yadav, Aditya Verma and Ashish Garg
DOI: 10.2174/9789815305364124010011
PDF Price: $15
Abstract
The difficult subject of automatic recognition has attracted a lot of interest
lately since it has so many uses in so many different industries. Face recognition is one
of those difficult problems, and as of right now, no method can offer a reliable response
in every circumstance. A novel method for recognizing human faces is presented in this
research. This method employs a two-dimensional discrete cosine transform (2D-DCT)
to compress photos and eliminate superfluous data from face photographs utilizing an
image-based approach to artificial intelligence. Based on the skin tone, the DCT
derives characteristics from photos of faces. DCT coefficients are calculated to create
feature vectors. To determine if the subject in the input picture is “present” or “not
present” in the image database, DCT-based feature vectors are divided into groups
using a self-organizing map (SOM), which uses an unsupervised learning method. By
categorizing the intensity levels of grayscale images into several categories, SOM
performs face recognition. An image database including 25 face pictures, five
participants, and five photos with various facial expressions for each subject was used
to complete the evaluation in MATLAB. This method's primary benefits are its highspeed processing capacity and minimal computing demands, both in terms of speed and
memory use.
Time Sequence Data Monitoring Method Based on Auto-Aligning Bidirectional Long and Short-Term Memory Network
Page: 158-170 (13)
Author: Abha Kiran Rajpoot*, Shashank Awasthi, Mahaveer Singh Naruka, Dibyahash Bordoloi and Neha Garg
DOI: 10.2174/9789815305364124010012
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Abstract
This research proposes a time sequence data monitoring method that utilizes
a auto-aligning bidirectional long and short-term memory network (LSTM) for
efficient and accurate monitoring of equipment. The method involves several steps,
including data preprocessing, bidirectional LSTM modeling, attention scoring,
prediction probability calculation, and real-time monitoring. By leveraging the
capabilities of auto-aligning and bidirectional LSTM, the proposed method aims to
enhance the accuracy and effectiveness of equipment monitoring based on time
sequence data.
Performance Evaluation of Wireless Communication System MIMO Detection Algorithms
Page: 171-184 (14)
Author: Shikha Agarwal*, Aarti Chaudhary, Alok Barddhan, Sushant Chamoli and Upendra Singh Aswal
DOI: 10.2174/9789815305364124010013
PDF Price: $15
Abstract
Multiple Input-Multiple Output systems have been included in prominent
core standards in recent decades, such as IEEE 802.11n (Wi-Fi). By increasing the
number of clients at the server, Multiple Input-Multiple Output Technologies will also
be used for Generation 5. Additionally, numerous gaps in the various detection
methods investigated by earlier researchers have been noted. Receivers must thus
develop new algorithms to make use of the satellite data to identify the sent data bits.
This chapter discusses the most well-known and promising multiple input multiple
output detectors as well as some surprising but fascinating ones. This study focuses on
defining the many views to highlight various research methodologies, offer a basic
idea, and illustrate the mathematical underpinnings of each perspective.
Design and Implementation of a Clock Generator Based on All Digital PLL (ADPLL)
Page: 185-199 (15)
Author: Shashank Awasthi*, Satya Prakash Yadav, Manish Chhabra, Richa Gupta and Rajesh Pokhariyal
DOI: 10.2174/9789815305364124010014
PDF Price: $15
Abstract
Every electronic circuit now includes a clock, which is essential because it
regulates the speed and efficiency of electronic circuits. The need for reliable and
accurate clock generation mechanisms in the circuits thus increases. There are two
ways to generate a clock. The first option is to use a crystal oscillator, which gives the
circuit a fixed clock. However, if different clocks are required in separate system
components, we must use several crystal oscillators, which increases the circuit's size
and complexity. The second choice is to employ a phase-locked loop (PLL) clock
generator system, which allows us to produce precise and wide-ranging clocks for the
various components of the system or circuit by utilizing dividers and multipliers.
Digital methods are used in the design and implementation of a clock generator based
on an All-Digital Phase-Locked Loop (ADPLL) to provide reliable and precise clock
signals. ADPLLs are appealing substitutes for conventional analog PLLs because they
have better noise immunity, are scalable, and are simple to integrate into digital
systems. In this project, a method for all digital phase-locked loops (ADPLL) that
solely makes use of digital cell libraries is demonstrated. For use in digital circuits, this
ADPLL is intended to create a broad frequency range. The suggested ADPLL is
portable for different processes and ideal for SoC applications since it can be
implemented using standard cells. It will be created using MATLAB Simulink
modeling, and then it will be put into use on an XILINX FPGA. An ADPLL clock
generator's design and implementation process generally includes the following steps: The appropriate clock frequency range, stability criteria, phase noise specifications,
power consumption restrictions, and other performance factors should all be
determined. Architecture Selection: Based on the system requirements and trade-offs,
select a suitable ADPLL architecture. The advantages and disadvantages of various
designs, such as Bang-Bang, Sigma-Delta, and Delay-Locked Loop (DLL), vary.
Designing the ADPLL's separate parts, such as the PFD, DLF, NCO, and frequency
divider, is known as component design. Designing digital circuitry and algorithms to
carry out the necessary operations is required. Simulation and Verification: To verify
the ADPLL design's performance, functionality, and stability, specialized software
tools are used. If required, we change the design parameters. Layout and Physical
Design: Create a hardware description language (HDL) implementation of the ADPLL
design and layout and design the circuitry physically. This takes into account factors
like power distribution, noise reduction, and signal integrity. Integration and testing:
The ADPLL design should be integrated into the larger system, connected to the
reference clock source, and tested thoroughly to ensure that it operates as expected
under a variety of circumstances. The ADPLL design should be tweaked to improve
performance, such as by lowering power consumption, jitter performance, or lock time.
Three-Dimensional Point Cloud Initial Enrollment Algorithm Based on Centre-of-mass and Centering
Page: 200-212 (13)
Author: Mahaveer Singh Naruka*, Pawan Kumar Singh, Manish Chhabra, Rishika Yadav and Neha Garg
DOI: 10.2174/9789815305364124010015
PDF Price: $15
Abstract
This research presents a novel algorithm for the initial enrollment of threedimensional point clouds, addressing the issue of accuracy enrollment algorithms, such
as the Iterative Closest Point (ICP), being prone to local optima in point cloud
enrollment. The proposed method employs a filtering technique to preprocess the point
cloud data, followed by establishing an angular shift model using the centre-of-mass
and mass center of the point cloud data. An iterative rotation model is then constructed
to determine the optimal angular shift, enabling the completion of the initial
enrollment. Furthermore, the effectiveness of the initial enrollment algorithm is
validated by comparing it with the conventional center-of-gravity-based initial
enrollment method, along with a subsequent accuracy enrollment using the ICP
algorithm. Comparative experiments demonstrate the superior performance of the
proposed algorithm in terms of initial enrollment effectiveness.
Multi-Resolution Image Similarity Learning: A Method for Extracting Comprehensive Image Features
Page: 213-224 (12)
Author: Sheradha Jauhari*, Sansar Singh Chauhan, Gunajn Aggarwal, Amit Gupta and Navin Garg
DOI: 10.2174/9789815305364124010016
PDF Price: $15
Abstract
This research presents an image similarity learning method that focuses on
extracting multi-resolution features from images. The proposed method involves a
series of steps, including image collection, normalization processing, image pairing
based on visual judgment and a Hash algorithm, and division of data into training and
testing sets. Furthermore, a network model is constructed using a deep learning
framework, and a specific objective function and optimizer are designated for
similarity learning. The network model is then trained and tested using the prepared
data sets. This method addresses several challenges encountered in conventional image
similarity learning, such as limited feature information extraction, inadequate
description of image features, limitations imposed by data volume during network
training, and susceptibility to overfitting.
Tensor Singular Value Decomposition-Based Multiple View Spectral Segmentation
Page: 225-239 (15)
Author: Ashish Dixit*, Pawan Kumar Singh, Satya Prakash Yadav, Dibyahash Bordoloi and Upendra Singh Aswal
DOI: 10.2174/9789815305364124010017
PDF Price: $15
Abstract
This research presents a novel approach called “Multiple View Spectral
Segmentation based on Tensor Singular Value Decomposition” for the segmentation of
multi-view data. The algorithm utilizes three-rank tensors and constructs a probability
transfer matrix for all view data. By exploiting the low-rank nature of tensors in the
lateral, longitudinal, and vertical directions, the proposed procedure characterizes the
tensor's low-rank properties in each dimension using a multi-rank approach based on
tensor singular value decomposition (Tensor-SVD). Tensor-SVD decomposition, being
based on tube convolution, enables the model to capture spatial correlations more
effectively compared to other tensor resolution techniques and procedures based on
two-dimensional structure relationships. Furthermore, the use of Fourier transformation
allows for efficient calculations, thereby improving computational efficiency.
Experimental results demonstrate that the proposed tensor resolution model based on
Tensor-SVD achieves improved segmentation performance for multiple-view data.
Enhanced CNN-Based Failure Integrated Assessment Procedure for Energy Accumulator Packs
Page: 240-254 (15)
Author: Sachin Jain*, Kamna Singh, Prashant Upadhyay, Richa Gupta and Ashish Garg
DOI: 10.2174/9789815305364124010018
PDF Price: $15
Abstract
This research presents a failure-integrated assessment procedure and
structure for energy accumulator packs using an enhanced Convolutional Neural
Network (CNN). The proposed approach involves wavelet packet decomposition
processing of voltage change and State of Charge (SOC) signals from a lithium
accumulator to extract energy values as input features. The assessment network
performs a preliminary failure assessment on the energy accumulator pack, followed by
evaluating whether the preliminary assessment result satisfies the assessment
confirmation condition. If met, an assessment result for the energy accumulator pack is
obtained. Otherwise, an auxiliary assessment using a CNN network is conducted for
further analysis. The primary assessment result and auxiliary assessment result are then
fused using the D-S evidence theory procedure to generate a comprehensive integrated
assessment result. Finally, the integrated assessment result is evaluated, and the
ultimate assessment result is determined. The proposed procedure improves the
assessment accuracy of energy accumulator packs by enhancing the structure of the
CNN network, determining the optimal size of the convolution kernel based on the
Bayesian Information Criterion (BIC), and incorporating auxiliary assessment networks
for enhanced accuracy and integrated assessment.
Fine Granularity Conceptual Model for Bilinearity Fusion Features and Learning Methods in Multilayer Feature Extraction
Page: 255-267 (13)
Author: Satya Prakash Yadav*, Mahaveer Singh Naruka, Prashant Upadhyay, Sushant Chamoli and Rajesh Pokhariyal
DOI: 10.2174/9789815305364124010019
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Abstract
This research presents a novel approach for fine granularity image analysis
by combining bilinearity fusion features and learning methods. A depth convolutional
network model, VGG16, is utilized to extract multilayer features from the fine
granularity images. The proposed method involves the fusion of features extracted
from VGG-16conv4_1, VGG-16conv4_2, and VGG-16conv4_3 using bilinear feature
descriptors. The fused features are then fed into a softmax-based multi-class classifier
to obtain classification results. The preprocessing phase involves data enhancement
techniques such as subtracting image mean value, noise elimination, random cropping,
and image level overturning. By leveraging the fusion of fine granularity image
multilayer features, the proposed approach enhances classification precision even with
only image-level classification information.
From Chips to Systems: Exploring Disruptive VLSI Ecosystems
Page: 268-281 (14)
Author: Owais Ahmad Shah* and Devesh Tiwari
DOI: 10.2174/9789815305364124010020
PDF Price: $15
Abstract
This chapter provides an insightful exploration of the evolution and
disruptive impact of Very Large Scale Integration (VLSI) technology. The work traces
the development of VLSI from the integration of a few transistors to the intricate
ecosystem of today, highlighting notable developments in architectural innovations,
system-level design, and process technology. The growing impact of neuromorphic
circuits in the VLSI environment is highlighted. In addition to discussing the
difficulties the field faces, from scale constraints to design complexity, it also provides
an outlook of the future by speculating on the potential of quantum computing,
Artificial Intelligence (AI) driven design and ethical issues. The narrative underscores
the imperative of innovation, collaboration, and interdisciplinary approaches to
navigate the dynamic realm of VLSI, promising a future where VLSI continues to
revolutionize technology and shape our world.
Subject Index
Page: 282-287 (6)
Author: Satvik Vats, Vikrant Sharma, Dibyahash Bordoloi and Satya Prakash Yadav
DOI: 10.2174/9789815305364124010021
Introduction
This book demonstrates several use cases of how artificial intelligence (AI) and machine learning (ML) are revolutionizing problem-solving across various industries. The book presents 18 edited chapters beginning with the latest advancements in human-AI interactions and neuromorphic computing, setting the stage for practical applications. Chapters focus on AI and ML applications such as fingerprint recognition, glaucoma detection, and lung cancer identification using image processing. The book also explores the role of AI in professional operations such as UX design, event detection, and content analysis. Additionally, the book includes content that examines AI's impact on technical operations wireless communication, VLSI systems, and advanced manufacturing processes. Each chapter contains summaries and references for addressing the needs of beginner and advanced readers. This comprehensive guide is an essential resource for anyone seeking to understand AI's transformative role in modern problem-solving in professional industries.