基于视觉地图预采样构建的室内定位图像检索方法

Jianan Bai, Danyang Qin, Ping Zheng, Lin Ma
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引用次数: 1

摘要

在室内视觉定位系统中,逐点采样构建视觉地图的方法以其静态图像清晰、坐标计算简单等特点得到了广泛的应用。但是采样间隔过小会造成图像冗余,而采样间隔过大则会导致没有场景图像,从而导致定位效率变差,定位精度降低。因此,本文提出了一种基于预采样图像特征匹配的视觉地图构建方法,根据相邻位置图像的极极几何特征,在约束条件下确定最优采样间隔,在保证图像信息完整性的同时有效控制数据库大小。此外,为了实现视觉地图的快速检索,减少由于时间开销带来的定位误差,本文还设计了一种基于深度哈希的图像检索方法。该方法利用卷积神经网络提取图像特征,构建语义相似结构,指导哈希码的生成。本文在log-cosh函数的基础上,提出了一种函数曲线光滑且不受离群值影响的损失函数,并将其整合到深度网络中进行参数优化,实现了快速准确的图像检索。在FLICKR25K数据集和视觉地图上的实验证明,本文提出的方法可以实现亚秒级的图像检索,并且精度有保证,从而展示了其良好的性能。
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Image Retrieval Method Based on Visual Map Pre-Sampling Construction in Indoor Positioning
In visual indoor positioning systems, the method of constructing a visual map by point-by-point sampling is widely used due to its characteristics of clear static images and simple coordinate calculation. However, too small a sampling interval will cause image redundancy, while too large a sampling interval will lead to the absence of any scene images, which will result in worse positioning efficiency and inferior positioning accuracy. As a result, this paper proposed a visual map construction method based on pre-sampled image features matching, according to the epipolar geometry of adjacent position images, to determine the optimal sampling spacing within the constraints and effectively control the database size while ensuring the integrity of the image information. In addition, in order to realize the rapid retrieval of the visual map and reduce the positioning error caused by the time overhead, an image retrieval method based on deep hashing was also designed in this paper. This method used a convolutional neural network to extract image features to construct the semantic similarity structure to guide the generation of hash code. Based on the log-cosh function, this paper proposed a loss function whose function curve was smooth and not affected by outliers, and then integrated it into the deep network to optimize parameters, for fast and accurate image retrieval. Experiments on the FLICKR25K dataset and the visual map proved that the method proposed in this paper could achieve sub-second image retrieval with guaranteed accuracy, thereby demonstrating its promising performance.
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