Kushalatha MR | Nitte Meenakshi Institute Of Technology (original) (raw)

Papers by Kushalatha MR

Research paper thumbnail of Hyperspectral Image Classification Techniques for the Arecanut Crops

Journal of Xi'an University of Architecture & Technology, 2022

The most recent advancements in optics and photonics have produced a Hyperspectral image sensor w... more The most recent advancements in optics and photonics have produced a Hyperspectral image sensor with improved spectral and spatial resolution. To identify the materials and things on the earth's surface, geographical and spectral data are effectively used. The spectral signatures are modeled such that they can distinguish between different objects and materials. The classification of image pixels according to their spectral qualities can be seen as a similar challenge to the identification of various materials, objects, and surface ground cover classes based on their reflectance properties. Numerous fields, including astronomy, environmental research, surveillance, medicinal imaging, and agriculture have exploited classification of Hyperspectral imagery. The identification of items on the surface of the earth is well known to be possible with hyper spectral images. To perform classification and identify the various items on the image, the majorities of classifiers rely on spectral data and do not take spatial variables into account. Using the Spectral Angle Mapper Classification (SAM), Support Vector Machine algorithm, and Neural Net technique, the hyper spectral image is classified in this study based on spectral and spatial attributes. The hyper spectral image is segmented into a few pieces. Each patch's high level spectral and spatial properties are constructed using CNN, and multilayer perception aids in the categorization of picture data into distinct classes. The outcomes of the simulations reveal that SVM archives have the highest classification accuracy.

Research paper thumbnail of Machine Learning Approaches for Attribute Identification and Quality Prediction of Red Wine

Research paper thumbnail of Morphological Image Processing  for Licence Plate Recognition using Image to Text Conversion

International Journal of Scientific research and Engineering Development , 2021

Research paper thumbnail of Comparison of Image Classification Techniques and its Applications

Asian Journal of Convergence in Technology , 2021

Image classification has become a hot topic in the field of remote sensing. In general, the compl... more Image classification has become a hot topic in the field of remote sensing. In general, the complex characteristics of multispectral data make the accurate classification of such data challenging for traditional machine learning methods. In addition, multispectral imaging often deals with an inherently nonlinear relation between the captured spectral information and the corresponding materials. In this paper, we propose a novel classification method for multispectral imagery, named as support vector machine (SVM). Pixel multispectral imagery can be represented by amplitude, phase and residual in frequency. Its applicability and effects are assessed by the experiment using data set, in which CNN, and KNN based feature extraction methods are adopted for comparison, aiming to evaluate the performance of the proposed method. Experimental results illustrate that the proposed model gains the highest classification accuracy. Comparison of various performance parameters showed that KNN works better than SVM.

Research paper thumbnail of Development of Vegetation Indices for Hyperspectral Remote Sensed data

IJCRT, 2022

Monitoring the quantity and quality of urban vegetation accurately aids regional greening efforts... more Monitoring the quantity and quality of urban vegetation accurately aids regional greening efforts and enhances knowledge of vegetation's environmental impact. Building shadows and synthetic materials, on the other hand, can severely obscure vegetation estimations. Furthermore, vegetation indices (VIs) quickly saturate in high biomass settings, making vegetation quality assessments more challenging. Plant Indices (VIs) are the most effective and simple ways for computing both the qualitative and quantitative assessments of aspects like vegetation cover, vigor, and boom dynamics, among other things, derived from remote sensing-based canopies. The indices are being used enormously inside RS for a variety of objectives, including the usage of exceptional airborne and satellite television for computer systems, as well as the use of Unmanned Aerial Vehicles (UAVs). For now, there is no unifying mathematical equation that defines all the VIs due to complexity of many mild spectra combinations, equipment, platforms, and resolutions that are being used. As a result, customized algorithms based on unique mathematical expressions that are combined see mild radiation from vegetation, normally inexperienced spectra region, and nonvisible spectra to achieve proxy quantifications of the vegetation surface have been developed and tested for a variety of applications. Optimization VIs are typically adjusted to specific software requirements in real-world applications, and they are frequently utilized in tandem with excellent validation equipment and methods on the ground. The current study discusses spectral features in plants and describes the development of VIs, as well as the advantages and risks of developing unique indices. In agricultural improvement analytics, vegetation indices are a critical metric. Information precision and miles-away management are two primary motivators for employing vegetation indices in remote sensing, which are just two of the technology's many advantages.

Research paper thumbnail of Approaches for Hyperspectral Image Classification-Detailed Review

International Journal of Soft Computing and Engineering (IJSCE) , 2021

Hyperspectral Image (HSI) processing is the new advancement in image / signal processing field. T... more Hyperspectral Image (HSI) processing is the new advancement in image / signal processing field. The growth over the years is appreciable. The main reason behind the successful growth of the Hyperspectral imaging field is due to the enormous amount of spectral and spatial information that the imagery contains. The spectral band that the HSI which contains is also more in number. When an image is captured through the HSI cameras, it contains around 200-250 images of the same scene. Nowadays HSI is used extensively in the fields of environmental monitoring, Crop-Field monitoring, Classification, Identification, Remote sensing applications, Surveillance etc. The spectral and spatial information content present in Hyperspectral images are with high resolutions.Hyperspectral imaging has shown significant growth and widely used in most of the remote sensing applications due to its presence of information of a scene over hundreds of contiguous bands In. Hyperspectral Image Classification of materials is the critical application of HSI using Hyperspectral sensors. It collects hundreds of spectrum channels, where each channel consists of a sharp point of Electromagnetic Spectrum. The paper mainly focuses on Deep Learning techniques such as Convolutional Neural Network (CNN), Artificial Neural Network (ANN), and Support Vector machines (SVM), K-Nearest Neighbour (KNN) for the accuracy in classification. Finally in the summary the current state-of-the-art scheme, a critical discussion after reviewing the research work by other professionals and organizing it into review-based paper, also implying about the present status on classification accuracy using neural networks is carried out.

Research paper thumbnail of STUDY OF PRE-PROCESSING TECHNIQUES AND ATMOSPHERIC CORRECTION FOR A REMOTE SENSED IMAGE

IJCRT, 2022

Remote sensing is the acquisition of information about an object without making physical contact ... more Remote sensing is the acquisition of information about an object without making physical contact with it and it captures images of reasonably large areas. Regardless of instrumentation, picture acquisition is constantly enhanced by installing faster and more durable detectors, adding new cooling systems, and upgrading light sources. Nonetheless, there are a few considerations to address before beginning any sample's data processing (e.g., image compression, noise removal, removal of spiked points, background removal etc.). As a result, image pre-processing is virtually always necessary. In this paper, we perform atmospheric correction and pre-processing of a hyperspectral image (HSI). After applying the proposed techniques on Indian Pines, the SNR of the dataset has increased from 13.4264 to 23.7888 dB. After applying classification algorithms, we get 71.1823% as overall accuracy with kappa coefficient of 66.68% for BTC and 90.357% with kappa coefficient of 88.72% for KBTC. Except for calculation time, KBTC (Kernel Basic Thresholding Classifier) delivers the best performance in all criteria. There are substantial performance differences between the KBTC and the BTC (Basic Thresholding Classifier) algorithm.

Research paper thumbnail of Hyperspectral Image Classification Techniques for the Arecanut Crops

Journal of Xi'an University of Architecture & Technology, 2022

The most recent advancements in optics and photonics have produced a Hyperspectral image sensor w... more The most recent advancements in optics and photonics have produced a Hyperspectral image sensor with improved spectral and spatial resolution. To identify the materials and things on the earth's surface, geographical and spectral data are effectively used. The spectral signatures are modeled such that they can distinguish between different objects and materials. The classification of image pixels according to their spectral qualities can be seen as a similar challenge to the identification of various materials, objects, and surface ground cover classes based on their reflectance properties. Numerous fields, including astronomy, environmental research, surveillance, medicinal imaging, and agriculture have exploited classification of Hyperspectral imagery. The identification of items on the surface of the earth is well known to be possible with hyper spectral images. To perform classification and identify the various items on the image, the majorities of classifiers rely on spectral data and do not take spatial variables into account. Using the Spectral Angle Mapper Classification (SAM), Support Vector Machine algorithm, and Neural Net technique, the hyper spectral image is classified in this study based on spectral and spatial attributes. The hyper spectral image is segmented into a few pieces. Each patch's high level spectral and spatial properties are constructed using CNN, and multilayer perception aids in the categorization of picture data into distinct classes. The outcomes of the simulations reveal that SVM archives have the highest classification accuracy.

Research paper thumbnail of Machine Learning Approaches for Attribute Identification and Quality Prediction of Red Wine

Research paper thumbnail of Morphological Image Processing  for Licence Plate Recognition using Image to Text Conversion

International Journal of Scientific research and Engineering Development , 2021

Research paper thumbnail of Comparison of Image Classification Techniques and its Applications

Asian Journal of Convergence in Technology , 2021

Image classification has become a hot topic in the field of remote sensing. In general, the compl... more Image classification has become a hot topic in the field of remote sensing. In general, the complex characteristics of multispectral data make the accurate classification of such data challenging for traditional machine learning methods. In addition, multispectral imaging often deals with an inherently nonlinear relation between the captured spectral information and the corresponding materials. In this paper, we propose a novel classification method for multispectral imagery, named as support vector machine (SVM). Pixel multispectral imagery can be represented by amplitude, phase and residual in frequency. Its applicability and effects are assessed by the experiment using data set, in which CNN, and KNN based feature extraction methods are adopted for comparison, aiming to evaluate the performance of the proposed method. Experimental results illustrate that the proposed model gains the highest classification accuracy. Comparison of various performance parameters showed that KNN works better than SVM.

Research paper thumbnail of Development of Vegetation Indices for Hyperspectral Remote Sensed data

IJCRT, 2022

Monitoring the quantity and quality of urban vegetation accurately aids regional greening efforts... more Monitoring the quantity and quality of urban vegetation accurately aids regional greening efforts and enhances knowledge of vegetation's environmental impact. Building shadows and synthetic materials, on the other hand, can severely obscure vegetation estimations. Furthermore, vegetation indices (VIs) quickly saturate in high biomass settings, making vegetation quality assessments more challenging. Plant Indices (VIs) are the most effective and simple ways for computing both the qualitative and quantitative assessments of aspects like vegetation cover, vigor, and boom dynamics, among other things, derived from remote sensing-based canopies. The indices are being used enormously inside RS for a variety of objectives, including the usage of exceptional airborne and satellite television for computer systems, as well as the use of Unmanned Aerial Vehicles (UAVs). For now, there is no unifying mathematical equation that defines all the VIs due to complexity of many mild spectra combinations, equipment, platforms, and resolutions that are being used. As a result, customized algorithms based on unique mathematical expressions that are combined see mild radiation from vegetation, normally inexperienced spectra region, and nonvisible spectra to achieve proxy quantifications of the vegetation surface have been developed and tested for a variety of applications. Optimization VIs are typically adjusted to specific software requirements in real-world applications, and they are frequently utilized in tandem with excellent validation equipment and methods on the ground. The current study discusses spectral features in plants and describes the development of VIs, as well as the advantages and risks of developing unique indices. In agricultural improvement analytics, vegetation indices are a critical metric. Information precision and miles-away management are two primary motivators for employing vegetation indices in remote sensing, which are just two of the technology's many advantages.

Research paper thumbnail of Approaches for Hyperspectral Image Classification-Detailed Review

International Journal of Soft Computing and Engineering (IJSCE) , 2021

Hyperspectral Image (HSI) processing is the new advancement in image / signal processing field. T... more Hyperspectral Image (HSI) processing is the new advancement in image / signal processing field. The growth over the years is appreciable. The main reason behind the successful growth of the Hyperspectral imaging field is due to the enormous amount of spectral and spatial information that the imagery contains. The spectral band that the HSI which contains is also more in number. When an image is captured through the HSI cameras, it contains around 200-250 images of the same scene. Nowadays HSI is used extensively in the fields of environmental monitoring, Crop-Field monitoring, Classification, Identification, Remote sensing applications, Surveillance etc. The spectral and spatial information content present in Hyperspectral images are with high resolutions.Hyperspectral imaging has shown significant growth and widely used in most of the remote sensing applications due to its presence of information of a scene over hundreds of contiguous bands In. Hyperspectral Image Classification of materials is the critical application of HSI using Hyperspectral sensors. It collects hundreds of spectrum channels, where each channel consists of a sharp point of Electromagnetic Spectrum. The paper mainly focuses on Deep Learning techniques such as Convolutional Neural Network (CNN), Artificial Neural Network (ANN), and Support Vector machines (SVM), K-Nearest Neighbour (KNN) for the accuracy in classification. Finally in the summary the current state-of-the-art scheme, a critical discussion after reviewing the research work by other professionals and organizing it into review-based paper, also implying about the present status on classification accuracy using neural networks is carried out.

Research paper thumbnail of STUDY OF PRE-PROCESSING TECHNIQUES AND ATMOSPHERIC CORRECTION FOR A REMOTE SENSED IMAGE

IJCRT, 2022

Remote sensing is the acquisition of information about an object without making physical contact ... more Remote sensing is the acquisition of information about an object without making physical contact with it and it captures images of reasonably large areas. Regardless of instrumentation, picture acquisition is constantly enhanced by installing faster and more durable detectors, adding new cooling systems, and upgrading light sources. Nonetheless, there are a few considerations to address before beginning any sample's data processing (e.g., image compression, noise removal, removal of spiked points, background removal etc.). As a result, image pre-processing is virtually always necessary. In this paper, we perform atmospheric correction and pre-processing of a hyperspectral image (HSI). After applying the proposed techniques on Indian Pines, the SNR of the dataset has increased from 13.4264 to 23.7888 dB. After applying classification algorithms, we get 71.1823% as overall accuracy with kappa coefficient of 66.68% for BTC and 90.357% with kappa coefficient of 88.72% for KBTC. Except for calculation time, KBTC (Kernel Basic Thresholding Classifier) delivers the best performance in all criteria. There are substantial performance differences between the KBTC and the BTC (Basic Thresholding Classifier) algorithm.