Abstract—This paper presents a method for automatic tracking of the head, tail, and entire body movement of the nematode Caenorhabditis elegans (C. elegans) using computer vision and digital image analysis techniques. The characteristics of the worm’s movement, posture and texture information were ex-tracted from a 5-min image sequence. A Random Forests classifier was then used to identify the worm type, and the features that best describe the data. A total of 1597 individual worm video sequences, representing wild type and 15 different mutant types, were analyzed. The average correct classification ratio, measured by out-of-bag (OOB) error rate, was 90.9%. The features that have most discrimination ability were also studied. The algorithm ...
To uncover the genetic basis of behavioral traits in the model organism C. elegans, a common strateg...
An important model system for understanding genes, neurons and behavior, the nematode worm C. elegan...
<div><p>This paper presents a method for automated detection of complex (non-self-avoiding) postures...
Adslrml-The locomotion of C. eleguns (a microscopic worm) provides valuable information about mulanl...
The behavior of the nematode C. elegans has proven increasingly useful for the genetic dissection of...
Understanding the neural basis of decision making is a major challenge in many disciplines. One way ...
Caenorhabditis elegans is a valuable model organism in biomedical research that has led to major dis...
AbstractIn this paper, the application issues of vision sensing techniques to analysing the body pos...
We have designed a real-time computer vision system, the Multi-Worm Tracker (MWT), that can simultan...
Abstract—The nematode Caenorhabditis elegans is an im-portant model organism for many areas of biolo...
We present a multi-stage system for analysis of C. elegans behaviour through digital capture of magn...
The nematode C. elegans is a widely used model organism. It has many cells with human equivalents, m...
Abstract Background Caenorhabditis elegans nematodes are powerful model organisms, yet quantificatio...
Experiments on model organisms are used to extend the understanding of complex biological processes....
A major challenge of neuroscience is to understand the circuit and gene bases of behavior. C. elegan...
To uncover the genetic basis of behavioral traits in the model organism C. elegans, a common strateg...
An important model system for understanding genes, neurons and behavior, the nematode worm C. elegan...
<div><p>This paper presents a method for automated detection of complex (non-self-avoiding) postures...
Adslrml-The locomotion of C. eleguns (a microscopic worm) provides valuable information about mulanl...
The behavior of the nematode C. elegans has proven increasingly useful for the genetic dissection of...
Understanding the neural basis of decision making is a major challenge in many disciplines. One way ...
Caenorhabditis elegans is a valuable model organism in biomedical research that has led to major dis...
AbstractIn this paper, the application issues of vision sensing techniques to analysing the body pos...
We have designed a real-time computer vision system, the Multi-Worm Tracker (MWT), that can simultan...
Abstract—The nematode Caenorhabditis elegans is an im-portant model organism for many areas of biolo...
We present a multi-stage system for analysis of C. elegans behaviour through digital capture of magn...
The nematode C. elegans is a widely used model organism. It has many cells with human equivalents, m...
Abstract Background Caenorhabditis elegans nematodes are powerful model organisms, yet quantificatio...
Experiments on model organisms are used to extend the understanding of complex biological processes....
A major challenge of neuroscience is to understand the circuit and gene bases of behavior. C. elegan...
To uncover the genetic basis of behavioral traits in the model organism C. elegans, a common strateg...
An important model system for understanding genes, neurons and behavior, the nematode worm C. elegan...
<div><p>This paper presents a method for automated detection of complex (non-self-avoiding) postures...