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Kangjie Ling

Gender: Male

Major: Computer Application Technology  

Research Directions: Machine Learning, Artificial Intelligence, Deep Learning and Wireless Sensor Networks

Phone: (+86)135 8051 4874

Address: School of Electronic Engineering, South China Agricultural University, Guangzhou 510642, China

Research Interests

  • Image Analysis with Machine Learning Algorithms 
Using the state-of-the-art deep learning technology to solve the problems of nondestructive detection based on hyperspectral image. The main idea of these processes could be exampled with a paper recently written as follow. A distribution model of NPK content based on convolution neural networks (CNNs) and deep neural networks (DNNs) is proposed. Firstly, the spectral noise was reduced by Savitzky-Golay filter. The initial features extraction was carried out by using a principal component analysis (PCA) to identity a number of potential characteristic wavelengths according to the weigh coefficient distribution curve of the first three principal component images under the full wavelengths. For the characteristic spectral images and the principal component images, the texture based on the gray level co-occurrence matrix were extracted from those images, and the structure information of those images was also extracted based on CNN simultaneously. The hyperspectral wavelength feature data, texture data, images structure data and the combined data were utilized to develop particle swarm optimization-support vector regression (PSO-SVR) and independent component analysis-deep neural networks (ICA-DNNs) respectively. Some main conclusions were obtained: the performance of PSO-SVR model based on characteristic spectrum is best, which the best coefficient of determination (R²) of calibration set and validation set of the entire growth state were up to 0.8983 and 0.8891, respectively. Multi-source data fusion performance of ICA-DNNs is best, and the precision of ICA-DNNs model is improved based on feature spectrum, texture feature and images structure feature, the R2 of calibration set and validation set were 0.8998 and 0.8825 respectively. The results show that the PSO-SVR model based on the feature spectrum is the best, and the determination coefficient of the calibration set and validation set model is 0.8983 and 0.8891. The model of ICA-DNNs was rained based on stochastic gradient descent (SGD) algorithm. The precision of ICA-DNNs model is improved based on characteristic spectrum, texture feature and CNN structure feature. 
What's more, He is also interested in deep learning techniques for image analysis such as image recognition, classification, and super-resolution.

  • Applications of Deep Learning in Natural Language Processing 
His research interests focus on the applications of deep learning models in natural language processing (NLP). Specifically, using the recurrent neural networks (RNNs), convolution neural networks (CNNs), long short term memory (LSTM) models to solve the problems of text classification, sentiment analysis , and machine translation etc.

  • Artificial Intelligence in Wireless Sensor Networks
To address various challenges such as data aggregation and fusion, energy aware routing, optimal deployment and localization etc. in wireless sensor networks (WSNs) using computational intelligence (CI) algorithms, especially the application of evolutionary optimization strategies in neural networks (NNs).

Education 

Sept. 2016 - Present

Master degree candidate at South China Agricultural University, Guangzhou (exam-exempted postgraduate, Supervisor: Prof. Xuejun Yue)

Sept. 2012 - Jun. 2016

Bachelor, South China Agricultural University, Guangzhou

Major: Communication Engineering

Journal Publications 

Kangjie LING, X. YUE, Y. LIU, et al. Design of a farm product traceability system with QR code based on mobile Internet. Journal of South China Agricultural University, vol. 38, no. 3, pp. 118-124, 2017. Language: Chinese. 
Kangjie LING, X. YUE, L. WANG, Y. LIU, D. QUAN, J. WANG. Emergency vehicle traffic guidance system based on active RFID. Journal of Computer Applications, vol. 36, pp. 273-277, 2016. Language: Chinese. 
X. YUE, L. WANG, Y. LAN, Y. LIU, Kangjie LING, H. GAN. Algorithm of defogging UAV's aerial images based on DCP and OCE. Transactions of the Chinese Society for Agricultural Machinery, vol. 47, pp. 419-425, 2016. Language: Chinese. 
X. YUE, J. WANG, Y. LAN, Z. CEN, Y. LIU, Kangjie LING, H. GAN, L. WANG. Impacts of small-size unmanned aerial vehicle vibration characteristics on ultrasonic transducers. Journal of South China Agricultural University, vol. 37, no. 6, pp. 10-15, 2016. Language: Chinese. 
L. WANG, H. GAN, X. YUE, Y. LAN, J. WANG, Y. LIU, Kangjie LING, Z. CEN. Design of a precision spraying control system with unmanned aerial vehicle based on image recognition. Journal of South China Agricultural University, vol. 37, no. 6, pp. 23-30, 2016. Language: Chinese. 
X. YUE, H. ZHANG, Kangjie LING, et al. Research on the innovation and practical ability of undergraduate based on the college enterprise cooperation model. Science & Technology Vision, vol. 1, no. 187, pp. 86-87, 2017. Language: Chinese.

Patents and Research Projects

1. Unmanned Aerial Vehicle Detection System and Method Based on Laser and Binocular Vision (Publication No. CN105138002A, Ranking: 2/12)
2. A kind of Device and Method of Surface-to-Air Sensor Network Communication compatible with Unmanned Aerial Vehicle(Publication No. CN105828345A, Ranking:5/11)
3. Scientific and Technological Innovation Project of Water Conservancy of Guangdong Province , China. Demonstration and Research on the Key Technology of Water Saving Irrigation Based on UAV in Guangdong Province (Grant No. 2016-18), 2016-2019. Ranking: 18/20.

Awards and Scholarships 

1. National Scholarship for Postgraduates, 09/2016

2. The First-class Scholarship, 09/2016

3. The Outstanding Graduates Awards, 06/2016

4. The First-class Scholarship, 09/2015

5. National Scholarship for Encouragement, 09/2014

6. National Scholarship for Encouragement, 09/2013

7. National Scholarship for Encouragement, 09/2012

Personal Skills 

Be proficient in Matlab, Python and C programming, familiar with C++, JAVA and assembly language, strong knowledge of embedded hardware. Be skilled at building a set of basic machine learning models, deep models, and some probability graph models.