Person Fall Recognition by using Deep Learning: Convolutional Neural Networks and Image category classification using bag of feature
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Muhammad Adeel Ashraf | Faria Ferooz | Ahmad Hassan Butt | Yaser Daanial Khan | Waqar Hussain | M. A. Ashraf | Waqar Hussain | Y. Khan | Faria Ferooz
[1] Yaser Daanial Khan,et al. Prediction of N-linked glycosylation sites using position relative features and statistical moments , 2017, PloS one.
[2] T. Yorozu,et al. Electron Spectroscopy Studies on Magneto-Optical Media and Plastic Substrate Interface , 1987, IEEE Translation Journal on Magnetics in Japan.
[3] Kuo-Chen Chou,et al. iPhosH-PseAAC: Identify Phosphohistidine Sites in Proteins by Blending Statistical Moments and Position Relative Features According to the Chou's 5-Step Rule and General Pseudo Amino Acid Composition , 2019, IEEE/ACM Transactions on Computational Biology and Bioinformatics.
[4] Nouman Rasool,et al. Identification of Lysine Carboxylation Sites in Proteins by Integrating Statistical Moments and Position Relative Features via General PseAAC , 2019 .
[5] Kuo-Chen Chou,et al. iPhosT-PseAAC: Identify phosphothreonine sites by incorporating sequence statistical moments into PseAAC. , 2018, Analytical biochemistry.
[6] S. Khan,et al. N-MyristoylG-PseAAC: Sequence-based Prediction of N-Myristoyl Glycine Sites in Proteins by Integration of PseAAC and Statistical Moments , 2019, Letters in Organic Chemistry.
[7] Kuo-Chen Chou,et al. SPalmitoylC-PseAAC: A sequence-based model developed via Chou's 5-steps rule and general PseAAC for identifying S-palmitoylation sites in proteins. , 2019, Analytical biochemistry.
[8] Kuo-Chen Chou,et al. iPhosY-PseAAC: identify phosphotyrosine sites by incorporating sequence statistical moments into PseAAC , 2018, Molecular Biology Reports.
[9] Ahmad Hassan Butt,et al. A Treatise to Computational Approaches Towards Prediction of Membrane Protein and Its Subtypes , 2016, The Journal of Membrane Biology.
[10] Kuo-Chen Chou,et al. A Novel Modeling in Mathematical Biology for Classification of Signal Peptides , 2018, Scientific Reports.
[11] Kuo-Chen Chou,et al. Prediction of Nitrosocysteine Sites Using Position and Composition Variant Features , 2019, Letters in Organic Chemistry.
[12] Kuo-Chen Chou,et al. pNitro-Tyr-PseAAC: Predict Nitrotyrosine Sites in Proteins by Incorporating Five Features into Chou's General PseAAC. , 2019, Current pharmaceutical design.
[13] Sher Afzal Khan,et al. A Prediction Model for Membrane Proteins Using Moments Based Features , 2016, BioMed research international.
[14] Kuo-Chen Chou,et al. SPrenylC-PseAAC: A sequence-based model developed via Chou's 5-steps rule and general PseAAC for identifying S-prenylation sites in proteins. , 2019, Journal of theoretical biology.
[15] Ahmad Hassan Butt,et al. Prediction of antioxidant proteins by incorporating statistical moments based features into Chou's PseAAC. , 2019, Journal of theoretical biology.
[16] Kuo-Chen Chou,et al. pSSbond-PseAAC: Prediction of disulfide bonding sites by integration of PseAAC and statistical moments. , 2019, Journal of theoretical biology.
[17] Kuo-Chen Chou,et al. iHyd-PseAAC (EPSV): Identifying Hydroxylation Sites in Proteins by Extracting Enhanced Position and Sequence Variant Feature via Chou's 5-Step Rule and General Pseudo Amino Acid Composition , 2019, Current genomics.
[18] M. Young. The technical writer's handbook : writing with style and clarity , 1989 .
[19] Ahmad Hassan Butt,et al. Predicting membrane proteins and their types by extracting various sequence features into Chou’s general PseAAC , 2018, Molecular Biology Reports.
[20] B. Noble,et al. On certain integrals of Lipschitz-Hankel type involving products of bessel functions , 1955, Philosophical Transactions of the Royal Society of London. Series A, Mathematical and Physical Sciences.
[21] S. Khan,et al. iMethylK_pseAAC: Improving Accuracy of Lysine Methylation Sites Identification by Incorporating Statistical Moments and Position Relative Features into General PseAAC via Chou’s 5-steps Rule , 2019, Current genomics.