Smart retail stores are becoming the fact of our lives. Several computer vision and sensor based systems are working together to achieve such a complex and automated operation. Besides, the retail sector already has several open and challenging problems which can be solved with the help of pattern recognition and computer vision methods. One important problem to be tackled is the planogram compliance control. In this study, we propose a novel method to solve it. The proposed method is based on object detection, planogram compliance control, and focused and iterative search steps. The object detection step is formed by local feature extraction and implicit shape model formation. The planogram compliance control step is formed by sequence alignment via the modified Needleman-Wunsch algorithm. The focused and iterative search step aims to improve the performance of the object detection and planogram compliance control steps. We tested all three steps on two different datasets. Based on these tests, we summarize the key findings as well as strengths and weaknesses of the proposed method.
翻译:智能零售商店正在成为我们生活的事实。几个计算机视觉和传感器系统正在合作,以实现这样一个复杂和自动化的操作。此外,零售部门已经存在若干开放和具有挑战性的问题,这些问题可以通过模式识别和计算机视觉方法加以解决。一个需要解决的重要问题是计划图合规控制。在这个研究中,我们提出了一个解决它的新颖方法。提议的方法基于物体检测、计划图合规控制以及重点和迭接的搜索步骤。物体检测步骤由局部特征提取和隐含形状模型形成。计划图合规控制步骤通过修改的Neileman-Wunsch算法的顺序调整组成。重点和迭代搜索步骤的目的是改进目标检测和规划图合规控制步骤的性能。我们在两个不同的数据集上测试了所有三个步骤。根据这些测试,我们总结了拟议方法的关键发现以及优缺点。