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Local Parallel Cross Pattern: A Color Texture Descriptor for Image Retrieval

机译:局部并行交叉模式:图像检索的颜色纹理描述符

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摘要

Riding the wave of visual sensor equipment (e.g., personal smartphones, home security cameras, vehicle cameras, and camcorders), image retrieval (IR) technology has received increasing attention due to its potential applications in e-commerce, visual surveillance, and intelligent traffic. However, determining how to design an effective feature descriptor has been proven to be the main bottleneck for retrieving a set of images of interest. In this paper, we first construct a six-layer color quantizer to extract a color map. Then, motivated by the human visual system, we design a local parallel cross pattern (LPCP) in which the local binary pattern (LBP) map is amalgamated with the color map in parallel and cross manners. Finally, to reduce the computational complexity and improve the robustness to image rotation, the LPCP is extended to the uniform local parallel cross pattern (ULPCP) and the rotation-invariant local parallel cross pattern (RILPCP), respectively. Extensive experiments are performed on eight benchmark datasets. The experimental results validate the effectiveness, efficiency, robustness, and computational complexity of the proposed descriptors against eight state-of-the-art color texture descriptors to produce an in-depth comparison. Additionally, compared with a series of Convolutional Neural Network (CNN)-based models, the proposed descriptors still achieve competitive results.
机译:骑马的视觉传感器设备(例如,个人智能手机,家庭安全摄像头,车载摄像头和摄像机),图像检索波(IR)技术已受到越来越多的关注,因为它在电子商务,视频监控和智能交通的应用潜力。然而,确定如何设计有效的特征描述信息已经被证明是取回一组感兴趣的图像的主要瓶颈。在本文中,我们首先构造一个六层颜色量化来提取颜色映射。然后,由人的视觉系统的动机,我们设计,其中局部二元模式(LBP)地图被合并在平行和交叉的方式的彩色图本地并行交叉图案(LPCP)。最后,为了降低计算复杂度并提高鲁棒性的图像转动,LPCP分别延伸到均匀的本地并行交叉图案(ULPCP)和旋转不变的本地并行交叉图案(RILPCP)。大量的实验八个标准数据集进行。实验结果验证了有效性,效率,鲁棒性,和计算复杂性对国家的最先进的八色纹理描述符所提出的描述符以产生在深度比较。此外,一系列卷积神经网络(CNN)为基础的模型相比,所提出的描述仍然取得竞争的结果。

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