Uninformative Frame Detection in Colonoscopy Through Motion, Edge and Color Features

Colonoscopy is performed by using a long endoscope inserted in the colon of patients to inspect the internal mucosa. During the intervention, clinicians observe the colon under bright light to diagnose pathology and guide intervention. We are developing a computer aided system to facilitate navigation and diagnosis. One essential step is to estimate the camera pose relative to the colon from video frames. However, within every colonoscopy video is a large number of frames that provide no structural information e.g. blurry or out of focus frames or those close to the colon wall. This hampers our camera pose estimation algorithm. To distinguish uninformative frames from informative ones, we investigated several features computed from each frame: corner and edge features matched with the previous frame, the percentage of edge pixels, and the mean and standard deviation of intensity in hue-saturation-value color space. A Random Forest classifier was used for classification. The method was validated on four colonoscopy videos that were manually classified. The resulting classification had a sensitivity of 75i¾ź% and specificity of 97i¾ź% for detecting uninformative frames. The proposed features not only compared favorably to existing techniques for detecting uninformative frames, but they also can be utilized for the camera navigation purpose.

[1]  Yoshito Mekada,et al.  Detecting Informative Frames from Wireless Capsule Endoscopic Video Using Color and Texture Features , 2008, MICCAI.

[2]  Jun Sugiyama,et al.  Tracking of a bronchoscope using epipolar geometry analysis and intensity-based image registration of real and virtual endoscopic images , 2002, Medical Image Anal..

[3]  Yu Cao,et al.  Measuring Objective Quality of Colonoscopy , 2009, IEEE Transactions on Biomedical Engineering.

[4]  Jung-Hwan Oh,et al.  Blurry-frame detection and shot segmentation in colonoscopy videos , 2003, IS&T/SPIE Electronic Imaging.

[5]  Jung-Hwan Oh,et al.  Informative frame classification for endoscopy video , 2007, Medical Image Anal..

[6]  John F. Canny,et al.  A Computational Approach to Edge Detection , 1986, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[7]  Michal Mackiewicz,et al.  Wireless Capsule Endoscopy Color Video Segmentation , 2008, IEEE Transactions on Medical Imaging.

[8]  Jianfei Liu,et al.  A robust method to track colonoscopy videos with non-informative images , 2013, International Journal of Computer Assisted Radiology and Surgery.

[9]  William E. Higgins,et al.  Combined video tracking and image-video registration for continuous bronchoscopic guidance , 2008, International Journal of Computer Assisted Radiology and Surgery.

[10]  Gerard Lacey,et al.  Indistinct Frame Detection in Colonoscopy Videos , 2009, 2009 13th International Machine Vision and Image Processing Conference.

[11]  Pietro Valdastri,et al.  A Comparative Study of Ego-Motion Estimation Algorithms for Teleoperated Robotic Endoscopes , 2014, CARE@MICCAI.