Object Matching Using Boundary Descriptors
نویسنده
چکیده
The problem of object recognition is of immense practical importance and potential, and the last decade has witnessed a number of breakthroughs in the state of the art. Most of the past object recognition work focuses on textured objects and local appearance descriptors extracted around salient points in an image. These methods fail in the matching of smooth, untextured objects for which salient point detection does not produce robust results. The recently proposed bag of boundaries (BoB) method is the first to directly address this problem. Since the texture of smooth objects is largely uninformative, BoB focuses on describing and matching objects based on their post-segmentation boundaries. Herein we address three major weaknesses of this work. The first of these is the uniform treatment of all boundary segments. Instead, we describe a method for detecting the locations and scales of salient boundary segments. Secondly, while the BoB method uses an image based elementary descriptor (HoGs + occupancy matrix), we propose a more compact descriptor based on the local profile of boundary normals’ directions. Lastly, we conduct a far more systematic evaluation, both of the bag of boundaries method and the method proposed here. Using a large public database, we demonstrate that our method exhibits greater robustness while at the same time achieving a major computational saving – object representation is extracted from an image in only 6% of the time needed to extract a bag of boundaries, and the storage requirement is similarly reduced to less than 8%.
منابع مشابه
Summary of Planar Shape Recognition
Shape is one of the most important properties of objects. This lecture summarizes the algorithms for shape analysis. Several commonly used simple descriptors are stated first. Then the algorithms are classified into boundary (or external) descriptors and regional (or internal) descriptors based on the boundary tracking only and boundary plus the interior tracking respectively. The characteristi...
متن کاملComparison of Shape Signature Sub-Sampling Methods for Cell Tracking
New microscope technologies are enabling the acquisition of large volumes of live cell image data. Accurate temporal object tracking is required to facilitate the analysis of this data. One principal component of cell tracking is correspondence, matching cells between consecutive frames. This component can be enhanced by incorporating shape metrics into the tracking model. The measure of shape ...
متن کاملImproved feature descriptors for 3-D surface matching
Our interest is in data registration, object recognition and object tracking using 3D point clouds. There are three steps to our feature matching system: detection, description and matching. Our focus will be on the feature description step. We describe new rotation invariant 3D feature descriptors that utilize techniques from the successful 2D SIFT descriptors. We experiment with a variety of ...
متن کاملPolar contour shape descriptors in the template matching approach to object recognition
The paper provides a review of contour polar shape descriptors used in recognition of objects based on their silhouettes. The process of recognition in the template matching approach has to be based on so called descriptors, assigned to object features, e.g. shape, texture, color, luminance, context of the information and movement. Amongst them very special attention is paid to the shape, becau...
متن کاملShapes Matching and Indexing using Textual Descriptors
We propose in this paper a new matching and indexing method of shapes. Models of objects silhouettes are stored in the database using their textual descriptors. As we will see, XLWDOS descriptors are sensitive to noise. We propose a “reduction technique” to process noisy shapes and match corresponding XLWDOS descriptors using only “textual transformations”. The matching algorithm we propose is ...
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 2012