Differences

This shows you the differences between two versions of the page.

Link to this comparison view

Both sides previous revision Previous revision
Previous revision
Next revision Both sides next revision
staff:vatolkin:publications [2019-01-12 11:18]
staff:vatolkin:publications [2020-06-23 11:24]
igor.vatolkin [Journal Articles]
Line 6: Line 6:
  
 ===== Book Chapters ===== ===== Book Chapters =====
 +
 +<​html><​b><​font color=#​006633>​[7]</​font></​b>​ <i>I. Vatolkin, A. Nagathil</​i>:<​b><​font color=#​0000FF>​ Evaluation of Audio Feature Groups for the Prediction of Arousal and Valence in Music</​font></​b>​. In: N. Bauer, K. Ickstadt, K. Lübke, G. Szepannek, H. Trautmann, M. Vichi (Eds.) (Eds.): Applications in Statistical Computing: From Music Data Analysis to Industrial Quality Improvement,​ Springer, <​html><​font color=#​996600>​2019</​font></​html>​
  
 <​html><​b><​font color=#​006633>​[6]</​font></​b>​ <i>I. Vatolkin, C. Weihs</​i>:<​b><​font color=#​0000FF>​ Evaluation</​font></​b>​. In: C. Weihs, D. Jannach, I. Vatolkin, G. Rudolph (Eds.): Music Data Analysis: Foundations and Applications,​ CRC Press, <​html><​font color=#​996600>​2016</​font></​html>​ <​html><​b><​font color=#​006633>​[6]</​font></​b>​ <i>I. Vatolkin, C. Weihs</​i>:<​b><​font color=#​0000FF>​ Evaluation</​font></​b>​. In: C. Weihs, D. Jannach, I. Vatolkin, G. Rudolph (Eds.): Music Data Analysis: Foundations and Applications,​ CRC Press, <​html><​font color=#​996600>​2016</​font></​html>​
Line 21: Line 23:
 ===== Journal Articles ===== ===== Journal Articles =====
  
-<​html><​b><​font color=#​006633>​[3]</​font></​b>​ <i>D. Stoller, I. Vatolkin, H. Müller</​i>:<​b><​font color=#​0000FF>​ Intuitive and Efficient Computer-Aided Music Rearrangement with Optimised Processing of Audio Transitions</​font></​b>​. ​Accepted for Journal of New Music Research, <​html><​font color=#​996600>​2018</​font></​html>​+<​html><​b><​font color=#​006633>​[4]</​font></​b>​ <i>A. K. Hassen, H. Janßen, D. Assenmacher,​ M. Preuss, and I. Vatolkin</​i>:<​b><​font color=#​0000FF>​ Classifying Music Genres Using Image Classification Neural Networks</​font></​b>​. Archives of Data Science, Series A, 5(1):1-18, <​html><​font color=#​996600>​2018</​font></​html>​ 
 + 
 +<​html><​b><​font color=#​006633>​[3]</​font></​b>​ <i>D. Stoller, I. Vatolkin, H. Müller</​i>:<​b><​font color=#​0000FF>​ Intuitive and Efficient Computer-Aided Music Rearrangement with Optimised Processing of Audio Transitions</​font></​b>​. Journal of New Music Research, 47(5):​416-437, <​html><​font color=#​996600>​2018</​font></​html>​
  
 <​html><​b><​font color=#​006633>​[2]</​font></​b>​ <i>I. Vatolkin, M. Preuß, G. Rudolph, M. Eichhoff, and C. Weihs</​i>:<​b><​font color=#​0000FF>​ Multi-Objective Evolutionary Feature Selection for Instrument Recognition in Polyphonic Audio Mixtures</​font></​b>​. Soft Computing – A Fusion of Foundations,​ Methodologies and Applications,​ 16(12):​2027-2047,​ <​html><​font color=#​996600>​2012</​font></​html>​ <​html><​b><​font color=#​006633>​[2]</​font></​b>​ <i>I. Vatolkin, M. Preuß, G. Rudolph, M. Eichhoff, and C. Weihs</​i>:<​b><​font color=#​0000FF>​ Multi-Objective Evolutionary Feature Selection for Instrument Recognition in Polyphonic Audio Mixtures</​font></​b>​. Soft Computing – A Fusion of Foundations,​ Methodologies and Applications,​ 16(12):​2027-2047,​ <​html><​font color=#​996600>​2012</​font></​html>​
Line 30: Line 34:
 ===== Peer-Reviewed Conference Proceedings ===== ===== Peer-Reviewed Conference Proceedings =====
  
-<​html><​b><​font color=#​006633>​[29]</​font></​b>​ <i> I. Vatolkin and D. Stoller</​i>:<​b><​font color=#​0000FF>​ Evolutionary Multi-Objective Training Set Selection of Data Instances and Augmentations for Vocal Detection</​font></​b>​. ​Accepted for Proceedings of the 8th International Conference on Computational Intelligence in Music, Sound, Art and Design (EvoMUSART),​ <font color=#​996600>​2019</​font></​html>​+<​html><​b><​font color=#​006633>​[32]</​font></​b>​ <i> I. Vatolkin</​i>:<​b><​font color=#​0000FF>​ Evolutionary Approximation of Instrumental Texture in Polyphonic Audio Recordings</​font></​b>​. Accepted for Proceedings of the IEEE World Congress on Computational Intelligence (WCCI), <font color=#​996600>​2020</​font></​html>​ 
 + 
 +<​html><​b><​font color=#​006633>​[31]</​font></​b>​ <i> P. Ginsel, I. Vatolkin, and G. Rudolph</​i>:<​b><​font color=#​0000FF>​ Analysis of Structural Complexity Features for Music Genre Recognition</​font></​b>​. Accepted for Proceedings of the IEEE World Congress on Computational Intelligence (WCCI), <font color=#​996600>​2020</​font></​html>​ 
 + 
 +<​html><​b><​font color=#​006633>​[30]</​font></​b>​ <i> F. Heerde, I. Vatolkin, and G. Rudolph</​i>:<​b><​font color=#​0000FF>​ Comparing Fuzzy Rule Based Approaches for Music Genre Classification</​font></​b>​. Proceedings of the 9th International Conference on Artificial Intelligence in Music, Sound, Art and Design (EvoMUSART),​ pp. 35-48, <font color=#​996600>​2020</​font></​html>​ 
 + 
 +<​html><​b><​font color=#​006633>​[29]</​font></​b>​ <i> I. Vatolkin and D. Stoller</​i>:<​b><​font color=#​0000FF>​ Evolutionary Multi-Objective Training Set Selection of Data Instances and Augmentations for Vocal Detection</​font></​b>​. Proceedings of the 8th International Conference on Computational Intelligence in Music, Sound, Art and Design (EvoMUSART), pp. 201-216, <font color=#​996600>​2019</​font></​html>​
  
 <​html><​b><​font color=#​006633>​[28]</​font></​b>​ <i> I. Vatolkin and G. Rudolph</​i>:<​b><​font color=#​0000FF>​ Comparison of Audio Features for Recognition of Western and Ethnic ​ <​html><​b><​font color=#​006633>​[28]</​font></​b>​ <i> I. Vatolkin and G. Rudolph</​i>:<​b><​font color=#​0000FF>​ Comparison of Audio Features for Recognition of Western and Ethnic ​
 
Last modified: 2023-03-21 18:36 by igor.vatolkin
DokuWikiRSS-Feed