Preface
Page: ii-iii (2)
Author: Praveen Kumar Shukla and Tushar Kanti Bera
DOI: 10.2174/9789815124729123010002
Enhanced Machine Learning Techniques for Pest Control and Leaf Disease Identification
Page: 1-22 (22)
Author: Sujatha Kesavan*, Kalaivani Anbarasan, Tamilselvi Chandrasekharan, Dahlia Sam, Nalinashini Ganesamoorthi, Kamatchi Chandrasekar, Krishna Kumar Ramaraj, Nallamilli Pushpa Ganga Bhavani, Srividhya Veerabathran, B. Rengammal Sankari and Gujjula Jhansi
DOI: 10.2174/9789815124729123010004
PDF Price: $15
Abstract
The agricultural sector has become an important income source for our
country. In terms of nutrient absorption, plant diseases affecting the agricultural yield
are creating a great hazard. In agriculture, recognizing infectious plants seems
challenging due to the premise of the needed infrastructure. To prevent the spread of
diseases, the identification of infectious leaves in the plant is observed to be a
necessary step. This work aims to propose a machine learning technique on the ANN
method for plant diseases identification and classification. This paper proposes a novel
hybrid algorithm, called Black Widow Optimization Algorithm with Mayfly
Optimization Algorithm (BWO-MA), for solving global optimization problems.
In this paper, a BWO-MA with Artificial Neural Networks (ANN) based diagnostic
model for earlier diagnosis of plant diseases is developed. Comparison has been done
with existing machine learning methods with the proposed BWO-MA-based ANN
architecture to accommodate greater performance. The comprehensive analysis showed
that our proposal achieved splendid state-of-the-art performance.
Automatic Recognition and Classification of Tomato Leaf Diseases Using Transfer Learning Model
Page: 23-40 (18)
Author: Santosh Kumar Upadhyay* and Avadhesh Kumar
DOI: 10.2174/9789815124729123010005
PDF Price: $15
Abstract
Timely diagnosis of plant disease is important to get better crop yields.
Infected plants can cause significant financial losses to farmers by lowering crop
yields. It is extremely desirable to detect early signs and symptoms of plant diseases in
a nation like India, where agriculture supports the majority of the population. More
accurate and faster plant disease detection might assist in lowering the damage. With
tremendous improvements and advancements in deep learning, the effectiveness and
precision of plant disease detection and identification systems may be improved. The
goal of this study is to discover leaf illnesses found in tomato crops and reduce the
financial losses caused by the diseases. We have implemented transfer learning using a
pre-trained Squeeze Net Model to detect and classify tomato leaf diseases. Our model
can automatically detect 9 types of deadly diseases that are very common in tomato
crops. We have acquired 10 classes (one healthy leaf class and 9 diseased leaf classes)
consisting of 16,012 tomato leaf samples from a benchmarked Plant Village dataset to
train and validate the suggested method. On the public dataset, the class-wise
classification precision rate varies from 77.9% to 99.6%, and the overall classification
accuracy of the suggested model is observed as 93.1% which is a significant
enhancement in performance over previous tomato disease detection techniques.
Detection and Categorization of Diseases in Pearl Millet Leaves using Novel Convolutional Neural Network Model
Page: 41-52 (12)
Author: Manjunath Chikkamath*, Dwijendra Nath Dwivedi, Rajashekharappa Thimmappa and Kyathanahalli Basavanthappa Vedamurthy
DOI: 10.2174/9789815124729123010006
PDF Price: $15
Abstract
Pearl millet is a staple food crop in areas with drought, low soil fertility, and
higher temperatures. Fifty percent is the share of pearl millet in global millet
production. Numerous types of diseases like Blast, Rust, Bacterial blight, etc., are
targeting the leaves of the pearl millet crop at an alarming rate, resulting in reduced
yield and poor production quality. Every disease could have distinctive remedies, so,
wrong detection can result in incorrect corrective actions. Automatic detection of crop
fitness with the use of images enables taking well-timed action to improve yield and in
the meantime bring down input charges. Deep learning techniques, especially
convolutional neural networks (CNN), have made huge progress in image processing
these days. CNNs have been used in identifying and classifying different diseases
across many crops. We lack any such work in the pearl millet crop. So, to detect pearl
millet crop diseases with great confidence, we used CNN to construct a model in this
paper. Neural network models use automatic function retrieval to help in classify the
input image into the respective disease classes. Our model outcomes are very
encouraging, as we realized an accuracy of 98.08% by classifying images of pearl
millet leaves into two different categories namely: Rust and Blast.
Artificial Intelligence-based Solar Powered Robot to Identify Weed and Damage in Vegetables
Page: 53-77 (25)
Author: Kitty Tripathi* and Sushant Bhatt
DOI: 10.2174/9789815124729123010007
PDF Price: $15
Abstract
The agriculture sector plays a vital role in the Indian Economy and is known
as one of the key areas where automation is emerging to enable farmers to increase the
yield, prevent damage to the crop, reduce harvesting cost, etc. Artificial Intelligence
(AI) offers a large number of direct applications across various sectors and it can bring
a paradigm shift in the Indian farming sector. According to the report of the United
Nations, the land area for cultivation will be 4% by the year 2050 so smart farming
processes are the need of the hour and AI can help in finding solutions to increase the
yield of crops and ensure food security. The chapter focuses on the role of solarpowered robots in the agriculture sector with the application of computer vision which
is capable of recognizing the physical properties of vegetables and helps in monitoring
the yield. We analyse a vegetable image data set with mass and dimension values
collected using a computer vision system and accurate measuring devices. After
successful detection and instance-wise segmentation, we extract the real-world
dimensions of the selected vegetable. After monitoring the health of vegetables, the
robot shares the profile through IoT in real-time and thus with low labour cost and
without exhaustive search, the crop can be prevented from damage by weeds which can
be identified at an early stage. Initial evaluation of the developed prototype exhibited a
noteworthy potential of this system in the area of effective control of weeds and crop
damage and assisting in harvesting.
Field Prevention System from Wild Animals
Page: 78-96 (19)
Author: Mayank Patel*, Latif Khan, Saurabh Srivastava and Harshita Jain
DOI: 10.2174/9789815124729123010008
PDF Price: $15
Abstract
Preventing wild animal attacks in fields is a highly challenging task for
farmers and field holders, especially during nighttime. Continuous monitoring is
difficult to maintain consistently. Therefore, we have designed an Intrusion Detection
System based on the Internet of Things (IoT). Our system utilizes the ESP8266 as its
central component, allowing for the implementation of an automated solution to repel
animals from fields without human intervention. Various devices, such as hooters,
flashlights with day-night vision cameras, and AI algorithms, are incorporated to detect
and differentiate animals from humans. Additionally, mobile applications provide a
convenient means to remotely monitor the system's actions from home.
Weather Forecasting using Machine Learning for Smart Farming
Page: 97-113 (17)
Author: Rajan Prasad* and Praveen Kumar Shukla
DOI: 10.2174/9789815124729123010009
PDF Price: $15
Abstract
Weather forecast is of prime attention of the researchers working in the
smart agriculture domain. In India, approximately 55% of the total crops are dependent
on weather (monsoon season). An accurate weather forecast model requires abundant
data to get the most accurate predictions. However, the weather forecast is a key area of
research and is always challenging from historical data. Hence, the current system used
for weather forecasting is an amalgamation of forecasting models, opinions, and
information trends, and specific patterns. This work presents the application of the
linear regression model and polynomial regression model for weather forecasting; like
a scheme to forecast rainfall, and precipitation using historical weather data. The
sample weather dataset covers 75 districts of Uttar Pradesh state which is received from
the Indian Meteorological Department (IMD). Furthermore, analysing the impact of
forecasts with different parameters is realized over six major crops Triticum (biological
name of wheat), Gram, Barley, Mustard, Sugarcane, and Maize of Uttar Pradesh State.
The main objective of the state-of-the-art is efficient crop management and passing the
appropriate message to farmers to make suitable decisions as per the weather
conditions.
Intelligent Crop Planning and Precision Farming
Page: 114-129 (16)
Author: Vani Agrawal*
DOI: 10.2174/9789815124729123010010
PDF Price: $15
Abstract
Countries are more concerned about agricultural needs as it is considered to
be the essential source of one's life. In our country, agriculture and farming play a vital
role in the economy and provide 45% of overall support for economic development. In
earlier research, the development of various agricultural support devices was
introduced but all were stuck up to a certain level. Remote surveillance, SMS-based
agricultural watering systems, and management are a few implementations in the area.
But all these implementations are facing some technical challenges due to their
complexity and it is hard to maintain the accuracy of these systems. Today’s
agricultural demands can be supported by Precision agriculture and Intelligent Crop
Farming. This chapter focuses on different aspects of Precision Agriculture and Smart
Farming.
Artificial Intelligence and Drones in Smart Farming
Page: 130-145 (16)
Author: Prabhash Chandra Pathak*, Syed Anas Ansar and Ajeet Kumar
DOI: 10.2174/9789815124729123010011
PDF Price: $15
Abstract
Since India is the second-highest populated country in the world and the
seventh-largest country in terms of area, which includes hills, plateaus, coastal areas,
etc., this situation of land makes a variety of crops and harvest timelines. These
timelines seeped into India’s culture and festivals. The harvest planning of farmers
became a very challenging task due to the variety of land and multitude of harvest
timelines as well. To execute this harvest plan, farmers must survey and map their land,
but their limited reach restricts them. In view of these restrictions and limitations,
drones can be very helpful for farmers; these drones can improve surveying quality and
provide a proper harvest timeline as output. Artificial Intelligence-powered drones will
give results in three stages: analysis of field planning, tracking the growth and counting
of crops, and finally the ripeness tracking and timing of the harvest.
Subject Index
Page: 146-150 (5)
Author: Praveen Kumar Shukla and Tushar Kanti Bera
DOI: 10.2174/9789815124729123010012
Introduction
Artificial Intelligence is playing a vital role in implementing the smart methods for the agriculture and it will change the aspects of performing agricultural activities. The objective of this book is to inform readers about how artificial intelligence is improving agriculture by exploring its applications. The book addresses several aspects of the artificial intelligence applications in the smart agriculture including, pest control, leaf disease identification, identification of weed, field security and applications of drones in smart farming. Chapters are contributed by experts in agriculture, computer science and biotechnology. Key Themes: Advanced machine learning techniques for pest control and disease identification Automated recognition and classification of plant diseases, focusing on tomatoes and pearl millet Integration of artificial intelligence for solar-powered robots to identify weeds and damages in vegetables Development of field prevention systems to deter wild animals in farming areas Utilization of machine learning for weather forecasting to facilitate smart agriculture practices Intelligent crop planning and precision farming through AI applications Integration of artificial intelligence and drones to enhance efficiency and effectiveness in smart farming operations Other features of the book include a list of references and simple summaries in each chapter to distil the information for readers. The book is a reference material for courses on automation in agriculture and as a handbook for anyone interested in new advances in farming.