Object Recognition by Combining Binary Local Invariant Features and Color Histogram

Dung Phan, Chi-Min Oh, Soohyung Kim, In Seop Na, Chil-Woo Lee
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引用次数: 8

Abstract

In this paper, we propose an approach for object recognition using binary local invariant features and color information. In our approach, we use a fast detector for key point detection and binary local features descriptor for key point description. For local feature matching, the Fast library for Approximated Nearest Neighbors (FLANN) is applied to match the query image and reference image in data set. A homography matrix which represents transformation of object in scene image and reference image is estimated from matching pairs by using the Optimized Random Sample Consensus Algorithm (ORSA). Then, we detect object location in the image, and remove background of image. Next, significant color feature is used to calculate global color histogram since it reflects main content of primitive image and also ignores noises. Similarity of query image and reference object image is a linear combination of color histogram correlation and number of feature matches. As a result, the proposed method can overcome drawbacks of object recognition method using only local features or global features. In addition, the use of binary feature makes feature description as well as feature matching faster to meet the requirement of a real time system. For evaluation, we experiment with two well-known and latest local invariant features including the Oriented Fast and Rotated Binary Robust Independent Elementary Features (ORB) and Fast Retina Key point (FREAK) and a planar object data set. According to the result, ORB feature shows that it is powerful as our system obtained the higher accuracy and fast processing time. The experimental results also proved that combination of binary local invariant feature and significant color is effective for planar object recognition.
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二值局部不变特征与颜色直方图相结合的目标识别
本文提出了一种利用二值局部不变特征和颜色信息进行目标识别的方法。在我们的方法中,我们使用快速检测器进行关键点检测,使用二进制局部特征描述符进行关键点描述。对于局部特征匹配,采用快速近似近邻库(FLANN)对查询图像和参考图像进行匹配。利用优化随机样本一致性算法(ORSA)从匹配对中估计出一个表示场景图像和参考图像中物体变换的单应性矩阵。然后,检测图像中的目标位置,去除图像背景。其次,利用显著性颜色特征来计算全局颜色直方图,因为它反映了原始图像的主要内容,并且忽略了噪声。查询图像与参考对象图像的相似度是颜色直方图相关性和特征匹配次数的线性组合。因此,该方法可以克服仅使用局部特征或全局特征的目标识别方法的缺点。此外,二进制特征的使用使得特征描述和特征匹配速度更快,满足了实时系统的要求。为了评估,我们实验了两个著名的和最新的局部不变特征,包括定向快速和旋转二进制鲁棒独立基本特征(ORB)和快速视网膜关键点(FREAK)和一个平面对象数据集。结果表明,ORB特征显示了系统的强大功能,获得了更高的精度和更快的处理时间。实验结果也证明了二值局部不变特征与显著颜色相结合对平面目标识别是有效的。
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