Title :
Automatic Cell Detection in Bright-Field Microscope Images Using SIFT, Random Forests, and Hierarchical Clustering
Author :
Mualla, F. ; Scholl, Stefan ; Sommerfeldt, B. ; Maier, Andreas ; Hornegger, Joachim
Author_Institution :
Pattern Recognition Lab., Friedrich-Alexander Univ., Erlangen, Germany
Abstract :
We present a novel machine learning-based system for unstained cell detection in bright-field microscope images. The system is fully automatic since it requires no manual parameter tuning. It is also highly invariant with respect to illumination conditions and to the size and orientation of cells. Images from two adherent cell lines and one suspension cell line were used in the evaluation for a total number of more than 3500 cells. Besides real images, simulated images were also used in the evaluation. The detection error was between approximately zero and 15.5% which is a significantly superior performance compared to baseline approaches.
Keywords :
adhesion; biomedical optical imaging; cellular biophysics; learning (artificial intelligence); medical image processing; optical microscopy; pattern clustering; SIFT; adherent cell lines; automatic cell detection; bright-field microscopy image; detection error; hierarchical clustering; machine learning-based system; random forests; simulated images; suspension cell line; Couplings; Feature extraction; Image segmentation; Microscopy; Training; Training data; Tuning; Biomedical image processing; image analysis; machine learning; microscopy; object detection;
Journal_Title :
Medical Imaging, IEEE Transactions on
DOI :
10.1109/TMI.2013.2280380