Segmentation and Classiication of Edges Using Minimum Description Length Approximation and Complementary Junction Cues
نویسندگان
چکیده
This article presents a method for segmenting and classifying edges using minimum description length (MDL) approximation with automatically generated break points. A scheme is proposed where junction candidates are rst detected in a multi-scale pre-processing step, which generates junction candidates with associated regions of interest. These junction features are matched to edges based on spatial coincidence. For each matched pair, a tentative break point is introduced at the edge point closest to the junction. Finally, these feature combinations serve as input for an MDL approximation method which tests the validity of the break point hypotheses and classiies the resulting edge segments as either \straight" or \curved". Experiments on real world image data demonstrate the viability of the approach.
منابع مشابه
Segmentation and Classi cation of Edges Using Minimum Description Length Approximation and Complementary Junction Cues
This article presents a method for segmenting and classifying edges using minimum description length (MDL) approximation with automatically generated break points. A scheme is proposed where junction candidates are rst detected in a multi-scale preprocessing step, which generates junction candidates with associated regions of interest. These junction features are matched to edges based on spati...
متن کاملSegmentation and Classification of Edges Using Minimum Description Length Approximation and Complementary Junction Cues
This article presents a method for segmenting and classifying edges using minimum description length (MDL) approximation with automatically generated break points. A scheme is proposed where junction candidates are rst detected in a multi-scale pre-processing step, which generates junction candidates with associated regions of interest. These junction features are matched to edges based on spat...
متن کاملKona: A Multi-junction Detector Using Minimum Description Length Principle
Corners, T-, Y-, X-junctions give vital depth cues which is a critical aspect of image \understanding": junctions form an important class of features invaluable in most vision systems. The three main issues in a junction (or any feature) detector are: scale, location, and, the junction (feature) parameters. The junction parameters are (1) the radius, or size, of the junction, (2) the kind of ju...
متن کاملJunctions: Detection, Classiication and Reconstruction
Junctions are important features for image analysis and form a critical aspect of image understanding tasks such as object recognition. We present a uniied approach to detecting (location of the center of the junction), classifying (by the number of wedges { lines, corners, 3-junctions such as T or Y junctions, or 4-junctions such as X-junctions) and reconstructing junctions (in terms of radius...
متن کاملSegmentation by Minimum Length Encoding
A digitized waveform is approximated by segments whose total description length is minimal for a given error bound. This approximation can be computed efficiently, and can be used for segmentation. The method is also shown to be applicable for segmentation and edge detection in gray level and range images.
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 1995