Marko Panić
Position:Research associate
Academic Rank: Research associate in the field of technical/technological sciences- information technologies
Dr. Marko Panić is a research associate in the field of technical sciences and information technologies at the BioSense Institute. His doctoral dissertation is related to the development of algorithms for accelerated image reconstruction from incomplete measurements using a sparse representation of signals and statistical Markov random models. His research direction includes statistical modeling of multidimensional data obtained from different sensors. He is currently working on the analysis and processing of images obtained from hyperspectral and multispectral cameras using advanced machine learning methods with application in assessing the quality of fruits and vegetables. As a member of the BioSense team, he participated in Syngenta’s “Crop Challenge” competition, which resulted in winning first place. He is actively involved in many projects from the Horizon 2020 call, including Antares, Cybele, Dragon and Flexirobots, as well as in projects with companies such as Krivaja, MK Agri and Delta Agrar.
Center:
CIT
Themes:
1. FastMast – instrument for early detection of mastitis
2. Environmental monitoring applications
3. Government
4. Hyperspectral, Multispectral and Thermal Imaging
5. Drone Imaging
6. Satellite imaging
7. Geospatial data analytics
8. Deep Learning
Projects:
Publications:
- Panić, M., Aelterman, J., Crnojević, V. and Pižurica, A., 2017. Sparse recovery in magnetic resonance imaging with a Markov random field prior. IEEE transactions on medical imaging, 36(10), pp.2104-2115.
- Panić, M., Jakovetić, D., Vukobratović, D., Crnojević, V. and Pižurica, A., 2020. MRI Reconstruction Using Markov Random Field and Total Variation as Composite Prior. Sensors, 20(11), p.3185.
- Panić, M., Aelterman, J., Crnojević, V. and Pižurica, A., 2016, August. Compressed sensing in MRI with a Markov random field prior for spatial clustering of subband coefficients. In 2016 24th European Signal Processing Conference (EUSIPCO) (pp. 562-566). IEEE.
- Marko, O., Brdar, S., Panić, M., Šašić, I., Despotović, D., Knežević, M. and Crnojević, V., 2017. Portfolio optimization for seed selection in diverse weather scenarios. PloS one, 12(9), p.e0184198.
- Crnojević, V., Panić, M., Brkljač, B., Ćulibrk, D., Ačanski, J. and Vujić, A., 2014. Image processing method for automatic discrimination of hoverfly species. Mathematical Problems in Engineering, 2014.
Patent:
- A method for controlling water quality in the simultaneous presence of bacteria, sludge and algae by a heuristic approach
- A method for early prediction of wheat yield based on artificial intelligence
- System and method for intelligent soil sampling
- Universal system and method for automatic classification of pollen particle types in air in real time