Journal Article10.1007/S10044-018-0738-8
Pattern matching for industrial object recognition using geometry-based vector mapping descriptors
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TL;DR: Zhang et al. as discussed by the authors proposed a vector mapping descriptor (VMD) to match salient feature points between different images effectively under geometric transformation irrespective of missing or additional feature points.
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Abstract: Object recognition has always been a troublesome issue for computer vision. Despite continuous researches, it still remains a challenge to define features, match the corresponding features, and develop accuracy and precision concurrently while considering computational speed and robustness at the same time. In this paper, we propose a novel feature matching method called the vector mapping descriptor (VMD) to overcome existing issues. We implement sub-pixel units for edge detection to improve the accuracy of invariant features, after which sub-pixel unit edges are enhanced by least squares error estimation, and more accurate geometric features are extracted from the enhanced sub-pixel unit edges of an object’s geometric shape. We defined two geometric features, namely a circle center and a line intersection, used to construct the VMD, which represents the correlation of features consisting of the Euclidean distance and angle. The geometry-based VMD for pattern matching is proposed to match salient feature points between different images effectively under geometric transformation irrespective of missing or additional feature points. The VMD enabled one-to-one feature matching of corresponding grouped feature points from different images resulting in complete object matching. The proposed matching algorithm was invariant to geometric transformation such as translation, rotation, and scale differences and was also able cope with partial distortion or occlusion. Experiments were conducted with an industrial camera to show that our system can be executed in real time.
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References
Distinctive Image Features from Scale-Invariant Keypoints
TL;DR: This paper presents a method for extracting distinctive invariant features from images that can be used to perform reliable matching between different views of an object or scene and can robustly identify objects among clutter and occlusion while achieving near real-time performance.
A Computational Approach to Edge Detection
TL;DR: There is a natural uncertainty principle between detection and localization performance, which are the two main goals, and with this principle a single operator shape is derived which is optimal at any scale.
29.9K
Speeded-Up Robust Features (SURF)
TL;DR: A novel scale- and rotation-invariant detector and descriptor, coined SURF (Speeded-Up Robust Features), which approximates or even outperforms previously proposed schemes with respect to repeatability, distinctiveness, and robustness, yet can be computed and compared much faster.
14.9K
A performance evaluation of local descriptors
TL;DR: It is observed that the ranking of the descriptors is mostly independent of the interest region detector and that the SIFT-based descriptors perform best and Moments and steerable filters show the best performance among the low dimensional descriptors.
Shape matching and object recognition using shape contexts
TL;DR: This paper presents work on computing shape models that are computationally fast and invariant basic transformations like translation, scaling and rotation, and proposes shape detection using a feature called shape context, which is descriptive of the shape of the object.
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