Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Varun Narayan Mishra is active.

Publication


Featured researches published by Varun Narayan Mishra.


Journal of remote sensing | 2015

Comparison of support vector machine, artificial neural network, and spectral angle mapper algorithms for crop classification using LISS IV data

Pradeep Kumar; Dileep Kumar Gupta; Varun Narayan Mishra; Rajendra Prasad

The Resourcesat-2 is a highly suitable satellite for crop classification studies with its improved features and capabilities. Data from one of its sensors, the linear imaging and self-scanning (LISS IV), which has a spatial resolution of 5.8 m, was used to compare the relative accuracies achieved by support vector machine (SVM), artificial neural network (ANN), and spectral angle mapper (SAM) algorithms for the classification of various crops and non-crop covering a part of Varanasi district, Uttar Pradesh, India. The separability analysis was performed using a transformed divergence (TD) method between categories to assess the quality of training samples. The outcome of the present study indicates better performance of SVM and ANN algorithms in comparison to SAM for the classification using LISS IV sensor data. The overall accuracies obtained by SVM and ANN were 93.45% and 92.32%, respectively, whereas the lower accuracy of 74.99% was achieved using the SAM algorithm through error matrix analysis. Results derived from SVM, ANN, and SAM classification algorithms were validated with the ground truth information acquired by the field visit on the same day of satellite data acquisition.


Arabian Journal of Geosciences | 2016

A remote sensing aided multi-layer perceptron-Markov chain analysis for land use and land cover change prediction in Patna district (Bihar), India

Varun Narayan Mishra; Praveen Kumar Rai

Land use and land cover (LULC) changes are recognized as one of the most significant driver of environmental changes, mainly due to rapid urbanization. In this paper, an attempt has been made to appraise the ability of multi-layer perceptron-Markov chain analysis (MLP-MCA) integrated method to monitor and predict the future LULC change scenarios in Patna district, Bihar using remote sensing images. A supervised maximum likelihood classification method was applied to derive LULC maps from 1988, 2001, and 2013 Landsat Thematic Mapper (TM)/Enhanced Thematic Mapper Plus (ETM+)/Operational Land Imager (OLI) images, respectively. The LULC maps of 1988 and 2001 were employed to predict the LULC scenario for 2013 using MLP-MCA method. The predicted result was compared with the observed LULC map of 2013 to validate the method using kappa index statistics. Finally, based on the results, the future LULC change prediction for 2038 and 2050 was performed. The outcomes of this study reveal the rapid growth in ​built up area results in continuous decrease in agricultural lands.


Geocarto International | 2016

A statistical significance of differences in classification accuracy of crop types using different classification algorithms

Pradeep Kumar; Rajendra Prasad; Arti Choudhary; Varun Narayan Mishra; Dileep Kumar Gupta; Prashant K. Srivastava

Abstract Crop classification is needed to understand the physiological and climatic requirement of different crops. Kernel-based support vector machines, maximum likelihood and normalised difference vegetation index classification schemes are attempted to evaluate their performances towards crop classification. The linear imaging self-scanning (LISS-IV) multi-spectral sensor data was evaluated for the classification of crop types such as barley, wheat, lentil, mustard, pigeon pea, linseed, corn, pea, sugarcane and other crops and non-crop such as water, sand, built up, fallow land, sparse vegetation and dense vegetation. To determine the spectral separability among crop types, the M-statistic and Jeffries–Matusita (J–M) distance methods have been utilised. The results were statistically analysed and compared using Z-test and χ2-test. Statistical analysis showed that the accuracy results using SVMs with polynomial of degrees 5 and 6 were not significantly different and found better than the other classification algorithms.


Environmental Earth Sciences | 2017

Dual-polarimetric C-band SAR data for land use/land cover classification by incorporating textural information

Varun Narayan Mishra; Rajendra Prasad; Pradeep Kumar; Dileep Kumar Gupta; Prashant K. Srivastava

The work presented here showed a comprehensive evaluation of dual-polarimetric RISAT-1 data for land use/land cover (LULC) classification. The textural images were extracted with the help of gray-level co-occurrence matrix approach. Analysis of inter-class separability using transformed divergence method was performed to recognize the potential textural images. The best combination of textural images was also identified on the basis of standard deviation of preferred textural images and correlation coefficients. The maximum likelihood classifier-based classification results for different scenarios were compared. Furthermore, various classification algorithms, maximum likelihood classifier (MLC), artificial neural network (ANN), random forest (RF) and support vector machine (SVM), were performed on the best identified scenario in order to observe the most suitable algorithm for LULC classification. The combination of radiometric and their related textural images was found improving the overall classification accuracy than individual datasets. The highest overall classification accuracy was found using SVM (88.97%) followed by RF (88.45%), ANN (83.65%) and MLC (78.18%).


Russian Agricultural Sciences | 2016

Artificial neural network for crop classification using C-band RISAT-1 satellite datasets

Praveen Kumar; Rajendra Prasad; Varun Narayan Mishra; Dileep Kumar Gupta; Swati Singh

The artificial neural network algorithm has been used for the classification of rice, corn, pigeon pea, green gram, other crop and non-crop classes in Varanasi District, Uttar Pradesh, India. The C-band, dual polarimetric, temporal satellite datasets of RISAT-1 have been carried out in the present study. The separability analysis using transformed divergence and Jefferies Matusita distance methods were compared. The transformed divergence method has shown better separation between the classes in comparison to Jefferies Matusita distance method. The classification results were ground validated. The overall achieved accuracies were 74.21 and 77.36% for satellite data acquired on 9 August 2013 and 28 September 2013 respectively. Results have shown the better classification accuracy using 28th September 2013 data because of almost crops were in the reproductive stage and high reflectivity of the crops at this stage.


Computers and Electronics in Agriculture | 2016

Estimation of crop variables using bistatic scatterometer data and artificial neural network trained by empirical models

Dileep Kumar Gupta; Rajendra Prasad; Pradeep Kumar; Varun Narayan Mishra

Multi-temporal and multi-angular bistatic scatterometer measurements were carried out on two similar specially prepared kidney bean crop beds at two frequencies (6GHz and 10GHz) for like polarizations (HH- and VV-). The present study describes the estimation of crop variables and crop covered soil moisture of kidney bean crop using artificial neural network (ANN). The suitable configurations of bistatic scatterometer system were found at 10GHz, 50? incidence angle for the estimation of kidney bean crop variables and 6GHz, 20? incidence angle for the estimation of crop covered soil moisture at VV-polarization by linear regression analysis. Two artificial neural network models namely ANN-I and ANN-II were developed for the estimation of crop variables and crop covered soil moisture of kidney bean crop, respectively. The observed data set (scattering coefficients, crop variables and crop covered soil moisture) of first crop bed of kidney bean was used as a reference data set for developing empirical models. The training of the ANN-I model was done using 95 data set generated through empirical models consistent with the age of the kidney bean crop. The ANN-II was trained using the scattering coefficients and crop covered soil moisture of reference crop bed. The trained ANN-I and ANN-II models were tested by the observed data set of second kidney bean crop bed. The estimated values by ANN-I and ANN-II were found very close to the observed values of the crop variables and crop covered soil moisture of second kidney bean crop bed.


Applied Water Science | 2018

Hydrological inferences through morphometric analysis of lower Kosi river basin of India for water resource management based on remote sensing data

Praveen Kumar Rai; Rajeev Singh Chandel; Varun Narayan Mishra; Prafull Singh

Satellite based remote sensing technology has proven to be an effectual tool in analysis of drainage networks, study of surface morphological features and their correlation with groundwater management prospect at basin level. The present study highlights the effectiveness and advantage of remote sensing and GIS-based analysis for quantitative and qualitative assessment of flood plain region of lower Kosi river basin based on morphometric analysis. In this study, ASTER DEM is used to extract the vital hydrological parameters of lower Kosi river basin in ARC GIS software. Morphometric parameters, e.g., stream order, stream length, bifurcation ratio, drainage density, drainage frequency, drainage texture, form factor, circularity ratio, elongation ratio, etc., have been calculated for the Kosi basin and their hydrological inferences were discussed. Most of the morphometric parameters such as bifurcation ratio, drainage density, drainage frequency, drainage texture concluded that basin has good prospect for water management program for various purposes and also generated data base that can provide scientific information for site selection of water-harvesting structures and flood management activities in the basin. Land use land cover (LULC) of the basin were also prepared from Landsat data of 2005, 2010 and 2015 to assess the change in dynamic of the basin and these layers are very noteworthy for further watershed prioritization.


Geocarto International | 2018

Comprehensive evaluation of soil moisture retrieval models under different crop cover types using C-band synthetic aperture radar data

Pradeep Kumar; Rajendra Prasad; Arti Choudhary; Dileep Kumar Gupta; Varun Narayan Mishra; A. K. Vishwakarma; A. K. Singh; Prashant K. Srivastava

Abstract In the present study, random forest regression (RFR), support vector regression (SVR) and artificial neural network regression (ANNR) models were evaluated for the retrieval of soil moisture covered by winter wheat, barley and corn crops. SVR with radial basis function kernel was provided the highest adj. R2 (0.95) value for soil moisture retrieval covered by the wheat crop at VV polarization. However, RFR provided the adj. R2 (0.94) value for soil moisture retrieval covered by barley crop at VV polarization using Sentinel-1A satellite data. The adj. R2 (0.94) values were found for the soil moisture covered by corn crop at VV polarization using RFR, SVR linear and radial basis function kernels. The least performance was reported using ANNR model for almost all the crops under investigation. The soil moisture retrieval outcomes were found better at VV polarization in comparison to VH polarization using three different models.


Geocarto International | 2018

Estimation of winter wheat crop growth parameters using time series Sentinel-1A SAR data

Praveen Kumar; Rajendra Prasad; Dileep Kumar Gupta; Varun Narayan Mishra; A. K. Vishwakarma; V. P. Yadav; R. Bala; Arti Choudhary; Ram Avtar

Abstract In the present study, Sentinel-1A Synthetic Aperture Radar analysis of time series data at C-band was carried out to estimate the winter wheat crop growth parameters. Five different date images were acquired during January 2015–April 2015 at different growth stages from tillering to ripening in Varanasi district, India. The winter wheat crop parameters, i.e. leaf area index, vegetation water content (VWC), fresh biomass (FB), dry biomass (DB) and plant height (PH) were estimated using random forest regression (RFR), support vector regression (SVR), artificial neural network regression (ANNR) and linear regression (LR) algorithms. The Ground Range Detected products of Interferometric Wide (IW) Swath were used at VV polarization. The three different subplots of 1 m2 area were taken for the measurement of crop parameters at every growth stage. In total, 73 samples were taken as the training data-sets and 39 samples were taken as testing data-sets. The highest sensitivity (adj. R2 = 0.95579) of backscattering with VWC was found using RFR algorithm, whereas the lowest sensitivity (adj. R2 = 0.66201) was found for the PH using LR algorithm. Overall results indicate more accurate estimation of winter wheat parameters by the RFR algorithm followed by SVR, ANNR and LR algorithms.


international conference on microwave optical and communication engineering | 2015

Evaluating the effects of spatial resolution on land use and land cover classification accuracy

Varun Narayan Mishra; Rajendra Prasad; Pradeep Kumar; Dileep Kumar Gupta; Prabhat Kumar Singh Dikshit; Shyam Bihari Dwivedi; Anurag Ohri

The choice of appropriate spatial resolution is a key factor to extract desired information from remotely sensed images. Optical data collected by two different sensors (LISS IV with 5.8 m and Landsat 8-OLI with 30 m spatial resolution respectively) were investigated against the capability to classify accurately into distinct land use and land cover (LULC) classes. To evaluate the quality of training samples class separability analysis using transformed divergence (TD) method was performed. Furthermore, supervised maximum likelihood classifier (MLC) was used to carry out LULC classification. The results indicated that the overall accuracy 83.28% and Kappa coefficient 0.805 for LISS IV image was found higher in comparison to Landsat 8-OLI image having overall accuracy 77.93% and Kappa coefficient 0.742 respectively.

Collaboration


Dive into the Varun Narayan Mishra's collaboration.

Top Co-Authors

Avatar

Rajendra Prasad

Indian Institutes of Technology

View shared research outputs
Top Co-Authors

Avatar

Dileep Kumar Gupta

Indian Institute of Technology (BHU) Varanasi

View shared research outputs
Top Co-Authors

Avatar

Pradeep Kumar

University of the Witwatersrand

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Arti Choudhary

Indian Institute of Technology Guwahati

View shared research outputs
Top Co-Authors

Avatar

A. K. Vishwakarma

Indian Institute of Technology (BHU) Varanasi

View shared research outputs
Top Co-Authors

Avatar

Kshitij Mohan

Banaras Hindu University

View shared research outputs
Top Co-Authors

Avatar

Praveen Kumar

Indian Institute of Technology Roorkee

View shared research outputs
Top Co-Authors

Avatar

Anurag Ohri

Indian Institute of Technology (BHU) Varanasi

View shared research outputs
Researchain Logo
Decentralizing Knowledge