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Object Detection and Recognition Using Template Matching with SIFT Features Assisted by Invisible Floor Marks

机译:使用模板匹配和不可见底标辅助的SIFT功能进行对象检测和识别

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摘要

For simultaneously localizing and mapping (SLAM) an indoor mobile robot, a method to process a monocular image of entire environmental view is proposed. To ensure that an object can be searched for, invisible floor marks are proposed for modifying the environment and which are useful in narrowing the search area in an image. Specifically our approach involves: 1) narrowing the searched area using invisible floor marks, 2) extracting features based on scale-invariant feature transform (SIFT), 3) using template matching with SIFT features assisted by partial templates and the spatial relationship to the floor, and 4) verifying object recognition with an AdaBoost classifier using Haar-like features based on object shape information. A robot is localized relative to the floor using the floor marks, then, objects in a clattered image are extracted and recognized, and 3D solid models of them are mapped on the floor to build a highly structured 3D map. Recognition was over 80% successful, including tables and chairs and taking several tens of seconds per 640 × 480 pixel image.
机译:为了同时定位和绘制室内移动机器人(SLAM),提出了一种处理整个环境视野的单眼图像的方法。为了确保可以搜索对象,建议使用不可见的地板标记来修改环境,这对于缩小图像中的搜索区域很有用。具体而言,我们的方法包括:1)使用不可见的地板标记缩小搜索区域,2)基于比例不变特征变换(SIFT)提取特征,3)使用带有SIFT特征的模板匹配以及部分模板以及与地板的空间关系来辅助,以及4)使用AdaBoost分类器基于对象形状信息使用类似Haar的特征来验证对象识别。使用地板标记将机器人相对于地板进行定位,然后,提取并识别出散乱图像中的对象,并将它们的3D实体模型映射到地板上,以构建高度结构化的3D地图。包括桌子和椅子在内的识别成功率超过80%,每640×480像素的图像识别需要花费数十秒的时间。

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