Worm Analysis System
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==Summary== | ==Summary== | ||
− | The current system includes the | + | The current system includes the background subtraction, detection, tracking, feature computation, display and interactive editing modules. We are working on adapting the current system into FARSIGHT, and on linking the system with other utilities of the FARSIGHT. We are also going to develop other worm analysis modules like the phenotype classification module. |
*Contributors to the New Worm System: | *Contributors to the New Worm System: |
Revision as of 04:18, 19 February 2010
There is a compelling need for improved software systems for delineating the C.elegans worms in time-lapse image sequences and tracking their movements. Segmentation and tracking provide the basis for making quantitative measurements of worm morphology, and various aspects of their dynamic behaviors. To facilitate the quantitative studies of worm behaviors, we developed an automated worm analysis system which is open-source and could be adopted by all researchers in the C.elegans community.
Contents |
News
- 2010-02-16: Worm System - version 0.2.1 released: [Download].
- 2010-02-14: Wiki Page for Worm Analysis System Created.
System Overview
Main Window
Figure1 shows a screenshot of the main window of the system.
- Menu: the menu provides operations like file operations and Editing Operations which allow user to edit (reverse, delete and correct) selected worms in the tracking window.
- Toolbar: the toolbar provides three buttons (figure2: suspend tracking, start/resume tracking, start tracking from a saved point) for controlling the tracking process. Users can suspend the tracking process at any time point to do observation or interactive editing when necessary. The third button makes it possible for the user to start the tracking process from any saved tracking result which stores worm shapes, features and identities. Thus the user doesn't need to start over the tracking if the program was closed normally or abnormally.
- Input and Output: the input and output sections allow users to specify directory of input image sequence and the directory for storing tracking result. For each frame, the tracking result includes a text file storing worm structure (centerline and contour points), a excel file storing extracted features (locomotion states, shape and motion features, etc.) and a png image took from the tracking window. The results could be explored at anytime during or after the tracking process [Explore Result].
- Settings: the settings section allows users to specify settings for core processing algorithms. Please refer to Settings for detailed information about these settings.
- Tracking Window: the tracking window provides both "tracking view" and "foreground view". Tracking view displays the centerline (head is shown as a yellow circle) and contour of tracked worms, and also their identity and motion state (F=Forward, R=Reversal, P=Pausing, O=Omega Bend, C=Physical Contact). Worms are highlighted by a transparent Minimum Enclosing Rectangle once selected. The foreground view shows the label image of foreground objects obtained by background subtraction method, and could help the user choose correct binarization parameters. A good binarization result means worm boundaries are well preserved in the binary image, and the foreground objects have no hole or dent.
- Log Window: log window displays a log for the tracking process. More detailed information about the tracking process is displayed in another terminal window.
Multiple Linked Views
Worm Analysis System provides a linked-view architecture where worm objects can be visualized in different views like image, table and scatter plot. Worm objects selected in one view are immediately highlighted in all the views (figure3).
Algorithms
- Background Subtraction: the system provides two background subtraction methods to handle images with different backgrounds.
- Background Subtraction Method I: A background image is computed first from all available images. Incoming image is subtracted with the obtained background image and the subtraction result is fed to Graph-Cut algorithm to output a smoothed binary image. This method applies only for static background.
- Background Subtraction Method II: Motion-based and intensity-based models are used to detect moving foreground objects. The obtained foreground confidence map is fed to a Spatio-Temporal Graph-Cut algorithm to output spatially and temporally smoothed binary foreground image.
- Tracking: the system incorporates our latest worm tracking algorithm [1], which could track multiple worms and recognize their locomotion states (Forward, Reversal, Pausing and Omega Bend) simultaneously. The tracker is initialized by the first two image frames on which worm detection is performed and head and tail are automatically determined (we assume worms are moving forward at the first two frames. If worm's head is not correctly identified, the user need to manually reverse the worm).
- Feature Computation: the system computes a subset of worm features in real-time during tracking. More features could be computed from the saved worm structures (centerline and contour points). For a complete list of our worm features, please refer to [Worm Features and Events].
System Operations
Edit Worms
To edit the worms when necessary, user can suspend the tracking process and then use the "Edit" menu (figure4) which provides three group editing operations. Deleting or reversing single worm could be done by double right-click or double left-click. Worm correction is only effective when selected worms are not in physical contact or doing omega bend.
Settings
Settings could be saved into a txt file or read back from the txt file. Most settings don't need to be changed, however, the binarization settings needs to be carefully selected since the tracking performance greatly depends on the binarization result. The binarization result in the foreground view window can help the user to choose the right binarization settings. Once tracking is started, most settings diabled and cannot be changed.
- General Settings:
- frame sampling rate: process only one frame from every N frames.
- shrink factor: shrink image N times.
- explore result: if checked, the user could explore the result by sliding the "Frame Number" slider. During the tracking, user needs to suspend the tracking first. The folder for storing the tracking results also needs to be provided.
- Binarization Settings:
- Method I
- alpha: the binary foreground image will be oversmoothed with small alpha value. The default value is 1.00.
- threshold: thresholding value for image after subtraction with the background image. Intensity value below this value will be set to 0. The default value is 40.
- Method II
- alpha: smoothing parameter in the graph-cut algorithm. Small alpha value eliminates noise in the background and holes in the foreground objects, but also results in oversmoothed binary image. The default value is 1.00.
- threshold: the default value is 1.00. Large threshold value can eliminate most noise, but also will exclude some parts of foreground objects.
- min sigma: the default value is 0. It is set to 10 in Demo2 and Demo3, since the sigma of background distribution is very small.
- init frame: the default value is 10, which means the motion-based model used in this background method is initialized by the first 10 frames. Usually this parameter doesn't need to be changed.
- Method I
- Detection Settings:
- min area and max area: foreground objects with size smaller than "min area" or larger than "max area" will be filtered out in the binarized image.
- min LW ratio and max LW ratio: these two values are used to identify and filter out worms with abnormal Length/Width ratio. It is effective only when the worm is detected. Detection is used when: 1)Initialization on the first two frames 2)There are worms need to be corrected 3)Checkbox "speed tracking" is checked.
- center points: number of centerline points of the worm model. Suggested value is 31 or 21.
- Tracking Settings:
- sigma_PROG: parameter of worm progression movement.
- sigma_RH: parameter of worm head displacement.
- sigma_RT: parameter of worm tail displacement.
- particles: number of particles or hypothesis used for each worm. Suggested value is 50 or 100.
- adjustment: times of centerline adjustment.
- correction: when the percentage of centerline points with value 1 is below specified value, the worm will be automatically corrected.
- varying worms: if checked, the tracker will detect and add the worms entering the field.
- tracking overlapping: if checked, the tracker will track the contour of overlapping worms. If unchecked, the tracker simply tracks overlapping worms with a bounding box (figure6 and figure7). If the user is not interested in studying worm behavior during physical contact, unchecking this checkbox helps speed up the tracking process.
- speed tracking: when worms are not in physical contact or doing omega bend, the processing could be sped up by using detection (worm identities will be correctly maintained) instead of tracking.
Tracking Result
The user needs to create a folder for storing the result first, and then specify the folder in the system. For each frame, the system outputs a image displaying the tracking result, an Excel file storing the worm features and a txt file storing worm shape information. In the txt file, each worm item contains four rows: the feature row which is the same as the information stored in the Excel file, two rows storing worm centerline points and one row storing the width at each centerline point. Features stored in the Excel file include:
1.Length // length of the worm 2.Width //width of the worm 3.Curvature //curvature of the worm centerline 4.Area //foreground object size underlying the worm 5.Orientation // orientation of the line linking head and tail 6.Head-Body Dist //distance between head and body (worm centroid) 7.Head-Tail Dist //distance between head and tail 8.HCT Angle //angle between line linking centroid and head and the line linking centroid and tail 9.MER.Amp //height of the minimum enclosing rectangle 10.MER.Length //length of the minimum enclosing rectangle 11.Speed //axial progression speed 12.Centroid Velocity // velocity of the worm centroid 13.Track Length //length of the track of the worm 14.Reversal Duraction //duration of reversal sessions this worm performed so far 15.Reversal Count //times of reversal sessions this worm performed so far 16.Contact Duration //duration of physical contact with other worms 17.Worm Duration //duration of the worm in the field 18.State //"FORD" (forward), "REVE" (reversal), "OMEB" (omega bend), "PAUS" (pausing), "LEFT" (left)
In the "output menu", the user can generate a summary of worm motion labels in an Excel file, in which each worm has a row storing all its motion labels (0=not active, 1=forward, 2=reversal, 3=Pausing, 4=Omega Bend, 5=Physical Contact) and a row storing all its speed values.
Explore Result
If the directory for saving tracking results is provided, users could explore the result during the tracking process simply by pausing the tracking first, checking the "explore result" box and sliding the "frame number" slider. The "explore result" box needs to be unchecked before resuming the tracking.
Start Tracking from Saved File
To start the tracking from saved tracking result, the user needs to specify the directory storing the tracking result, click the third button in the toolbar and choose the txt file from which the tracking will start(figure9).
Keyboard and Mouse Shortcuts
Ctrl+O: Open Settings Ctrl+S: Save Settings Ctrl+Q: Quit the program Ctrl+C: Correct selected worms Ctrl+R: Reverse selected worms Ctrl+D: Delete selected worms Ctrl+M: Output Summary of motion labels
Left Click on any view: select the clicked worm object Ctrl+Left Click on any view: toggle the selection of the clicked worm object Double Left-Click on the tracking view: reverse selected worm Double Right-Click on the tracking view: delete selected worm
Download System and Demos
- Source Code: Worm System's source code is contained in a subversion repository that has been configured to allow anonymous read-only access. You can check out a copy from the following location:
svn://www.openworld.rpi.edu/repos/farsight/branches/NewWormSystem
- Installable Versions of the System:
Windows 32-bit (Changed Time 2010-2-17 17:00pm): WormSystem-0.2.1-win32.exe Windows 64-bit (Changed Time 2010-2-17 17:00pm): WormSystem-0.2.1-win64.exe Mac (Changed Time 2010-2-17 17:00pm): WormSystem-0.2.1-Darwin.dmg
- Demos: four demos are provided for testing the system and helping users familiarize themselves with system operations and settings, some images are from [6] and the others are generously provided by Meghan Jobson at University of Utah. There is a setting file for each demo, and it could be read into the system by "Ctrl+O". The user needs to create a folder for storing the result first, and then specify the folder in the system.
Demo 1: Demo1.zip Demo 2: Demo2.zip Demo 3: Demo3.zip Demo 4: Demo4.zip
Summary
The current system includes the background subtraction, detection, tracking, feature computation, display and interactive editing modules. We are working on adapting the current system into FARSIGHT, and on linking the system with other utilities of the FARSIGHT. We are also going to develop other worm analysis modules like the phenotype classification module.
- Contributors to the New Worm System:
- Yu Wang
- Isaac Abbott
- For information of our old worm project, please refer to [Old Worm Project].
References
- [1] Yu Wang, Roysam Badrinath, “Joint Tracking and Locomotion State Recognition of C.elegans from Time-Lapse Image Sequences,” IEEE International Symposium on Biomedical Imaging (ISBI) 2010 (oral presentation).
- [2] Roussel Nicolas, Morton Christine A, Finger Fern P, Roysam Badrinath, “A computational model for C. elegans locomotory behavior : Application to multiworm tracking,” IEEE transactions on biomedical engineering, pp. 1786-1797, 2007.
- [3] Katsunori Hoshi, Ryuzo Shingai, “Computer-driven automatic identification of locomotion states in Caenorhabditis elegans,” J Neurosci Methods, vol. 157(2), pp.355-363, 2006.
- [4] Huang KM, Cosman P, Schafer WR, “Machine vision based detection of omega bends and reversals in C. elegans,” Journal of Neuroscience Methods, vol. 158, Issue 2, pp. 323-336, 2006.
- [5] Nicolas Roussel, "A Computational Model for C.elegans locomotory behavior: Application to Multi-Worm tracking", Phd Thesis, 2007.
- [6] K.M. Huang, P.C. Cosman, and W. Schafer, “Automated tracking of multiple C. elegans with articulated models,” IEEE International Symposium on Biomedical Imaging (ISBI) 2007, pp. 1240-1243, 2007.
- [7] Fontaine, E., Barr, A., Burdick, J. W., “Model-based tracking of multiple worms and fish,” ICCV Workshop on Dynamical Vision, 2007.
- [8] Wei Geng; Cosman, P.; Berry, C.C.; Zhaoyang Feng; Schafer, W.R., “Automatic tracking, feature extraction and classification of C. elegans phenotypes,” Biomedical Engineering, IEEE Transactions on, vol.51, no.10, pp.1811-1820, 2004.
- [9] Isard, M.; Blake, A., “A mixed-state condensation tracker with automatic model-switching,” Computer Vision, 1998. Sixth International Conference on, pp.107-112,1998.
- [10] G.J. Stephens et al., "Dimensionality and Dynamics in the Behavior of C. elegans", PLoS Comp. Biol., 2008.