Admission Help Line

18900 00888

Admissions 2026 Open — Apply!

Faculty Dr Arun Kumar

Dr Arun Kumar

Assistant Professor

Department of Electronics and Communication Engineering

Contact Details

arunkumar.y@srmap.edu.in

Office Location

Desk No:43, Level 3, Admin Block

Education

2024
Ph.D.
PDPM IIITDMJ, Jabalpur, M.P.,
India
2017
M.Tech
R.I.T.S. Bhopal, M.P.,
India
2011
B.E
S.A.T.I VIDISHA, BHOPAL, M.P.,
India

Experience

  • Mar. 2012 to Aug. 2013 – Assistant Professor – SISTec-E, Bhopal, M.P.
  • Jul. 2015 to Dec. 2019 – Assistant Professor– SISTec-R, Bhopal, M.P.

Research Interest

  • Development of crop image segmentation technique using 1-D and 2-D histogram technique.
  • Exploring multilevel thresholding techniques for crop images in agriculture field for disease identification, ripeness status of fruit plant, crop health monitoring etc.

Awards

  • 2020-24 – PhD Fellowship – PDPM IIITDM Jabalpur, Ministry of Human Resource Development, Govt. of India

Memberships

  • IEEE Graduate Student Member

Publications

  • A New Method for Multilevel Thresholding of Crop Images Using Coronavirus Herd Immunity Optimizer

    Dr Arun Kumar, Anil Kumar|Amit Vishwakarma|G K Singh

    Source Title: IEEE Transactions on Consumer Electronics, Quartile: Q1, DOI Link

    View abstract ⏷

    Due to the multimodality and uneven distribution of intensity levels in crop images, multilevel thresholding is a complicated job. In this paper, a new technique is proposed to segment the complex background color crop images (CBCCI) using recursive minimum cross entropy (R-MCE) and coronavirus herd immunity optimizer (CHIO). In the proposed method, CBCCI is converted into CIE lab color space, then pre-processed using Gaussian and Guided filters to smooth the flat part as well as preserve the color information on the edges. Finally, CHIO is applied with R-MCE to select the best possible threshold values. The accuracy of the proposed method is evaluated using peak signal-to-noise ratio, feature similarity index, structural similarity index, root mean square error, fitness value, and CPU time. To investigate the performance, a comparative study with bacterial foraging optimization, artificial bee colony, differential evolution, wind-driven optimization, firefly algorithm, sparse particle swarm optimization, and cuckoo search algorithm is made. The proposed method shows better average fidelity parameters than the above-reported algorithms. It also takes less computational time to obtain segmented images. Further, a graphical user interface is developed for consumer electronics applications which would be fast enough to process accurately and respond in real-time.
  • Silicon Nanotube FETs: From Device Concept to Analytical Model Development

    Dr Arun Kumar, Pramod Kumar Tiwari

    Source Title: Low-Dimensional Nanoelectronic Devices, DOI Link

    View abstract ⏷

    -

Patents

Projects

Scholars

Interests

  • Crop Disease Identification using Image Segmentation
  • Crop Image Segmentation
  • Image Processing

Thought Leaderships

There are no Thought Leaderships associated with this faculty.

Top Achievements

Education
2011
B.E
S.A.T.I VIDISHA, BHOPAL, M.P.,
India
2017
M.Tech
R.I.T.S. Bhopal, M.P.,
India
2024
Ph.D.
PDPM IIITDMJ, Jabalpur, M.P.,
India
Experience
  • Mar. 2012 to Aug. 2013 – Assistant Professor – SISTec-E, Bhopal, M.P.
  • Jul. 2015 to Dec. 2019 – Assistant Professor– SISTec-R, Bhopal, M.P.
Research Interests
  • Development of crop image segmentation technique using 1-D and 2-D histogram technique.
  • Exploring multilevel thresholding techniques for crop images in agriculture field for disease identification, ripeness status of fruit plant, crop health monitoring etc.
Awards & Fellowships
  • 2020-24 – PhD Fellowship – PDPM IIITDM Jabalpur, Ministry of Human Resource Development, Govt. of India
Memberships
  • IEEE Graduate Student Member
Publications
  • A New Method for Multilevel Thresholding of Crop Images Using Coronavirus Herd Immunity Optimizer

    Dr Arun Kumar, Anil Kumar|Amit Vishwakarma|G K Singh

    Source Title: IEEE Transactions on Consumer Electronics, Quartile: Q1, DOI Link

    View abstract ⏷

    Due to the multimodality and uneven distribution of intensity levels in crop images, multilevel thresholding is a complicated job. In this paper, a new technique is proposed to segment the complex background color crop images (CBCCI) using recursive minimum cross entropy (R-MCE) and coronavirus herd immunity optimizer (CHIO). In the proposed method, CBCCI is converted into CIE lab color space, then pre-processed using Gaussian and Guided filters to smooth the flat part as well as preserve the color information on the edges. Finally, CHIO is applied with R-MCE to select the best possible threshold values. The accuracy of the proposed method is evaluated using peak signal-to-noise ratio, feature similarity index, structural similarity index, root mean square error, fitness value, and CPU time. To investigate the performance, a comparative study with bacterial foraging optimization, artificial bee colony, differential evolution, wind-driven optimization, firefly algorithm, sparse particle swarm optimization, and cuckoo search algorithm is made. The proposed method shows better average fidelity parameters than the above-reported algorithms. It also takes less computational time to obtain segmented images. Further, a graphical user interface is developed for consumer electronics applications which would be fast enough to process accurately and respond in real-time.
  • Silicon Nanotube FETs: From Device Concept to Analytical Model Development

    Dr Arun Kumar, Pramod Kumar Tiwari

    Source Title: Low-Dimensional Nanoelectronic Devices, DOI Link

    View abstract ⏷

    -
Contact Details

arunkumar.y@srmap.edu.in

Scholars
Interests

  • Crop Disease Identification using Image Segmentation
  • Crop Image Segmentation
  • Image Processing

Education
2011
B.E
S.A.T.I VIDISHA, BHOPAL, M.P.,
India
2017
M.Tech
R.I.T.S. Bhopal, M.P.,
India
2024
Ph.D.
PDPM IIITDMJ, Jabalpur, M.P.,
India
Experience
  • Mar. 2012 to Aug. 2013 – Assistant Professor – SISTec-E, Bhopal, M.P.
  • Jul. 2015 to Dec. 2019 – Assistant Professor– SISTec-R, Bhopal, M.P.
Research Interests
  • Development of crop image segmentation technique using 1-D and 2-D histogram technique.
  • Exploring multilevel thresholding techniques for crop images in agriculture field for disease identification, ripeness status of fruit plant, crop health monitoring etc.
Awards & Fellowships
  • 2020-24 – PhD Fellowship – PDPM IIITDM Jabalpur, Ministry of Human Resource Development, Govt. of India
Memberships
  • IEEE Graduate Student Member
Publications
  • A New Method for Multilevel Thresholding of Crop Images Using Coronavirus Herd Immunity Optimizer

    Dr Arun Kumar, Anil Kumar|Amit Vishwakarma|G K Singh

    Source Title: IEEE Transactions on Consumer Electronics, Quartile: Q1, DOI Link

    View abstract ⏷

    Due to the multimodality and uneven distribution of intensity levels in crop images, multilevel thresholding is a complicated job. In this paper, a new technique is proposed to segment the complex background color crop images (CBCCI) using recursive minimum cross entropy (R-MCE) and coronavirus herd immunity optimizer (CHIO). In the proposed method, CBCCI is converted into CIE lab color space, then pre-processed using Gaussian and Guided filters to smooth the flat part as well as preserve the color information on the edges. Finally, CHIO is applied with R-MCE to select the best possible threshold values. The accuracy of the proposed method is evaluated using peak signal-to-noise ratio, feature similarity index, structural similarity index, root mean square error, fitness value, and CPU time. To investigate the performance, a comparative study with bacterial foraging optimization, artificial bee colony, differential evolution, wind-driven optimization, firefly algorithm, sparse particle swarm optimization, and cuckoo search algorithm is made. The proposed method shows better average fidelity parameters than the above-reported algorithms. It also takes less computational time to obtain segmented images. Further, a graphical user interface is developed for consumer electronics applications which would be fast enough to process accurately and respond in real-time.
  • Silicon Nanotube FETs: From Device Concept to Analytical Model Development

    Dr Arun Kumar, Pramod Kumar Tiwari

    Source Title: Low-Dimensional Nanoelectronic Devices, DOI Link

    View abstract ⏷

    -
Contact Details

arunkumar.y@srmap.edu.in

Scholars