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Tree-based Shape Descriptor for scalable logo detection

机译:基于树的形状描述符,用于可扩展徽标检测

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摘要

Detecting logos in real-world images is a great challenging task due to a variety of viewpoint or light condition changes and real-time requirements in practice. Conventional object detection methods, e.g., part-based model, may suffer from expensively computational cost if it was directly applied to this task. A promising alternative, triangle structural descriptor associated with matching strategy, offers an efficient way of recognizing logos. However, the descriptor fails to the rotation of logo images that often occurs when viewpoint changes. To overcome this shortcoming, we propose a new Tree-based Shape Descriptor (TSD) in this paper, which is strictly invariant to affine transformation in real-world images. The core of proposed descriptor is to encode the shape of logos by depicting both appearance and spatial information of four local key-points. In the training stage, an efficient algorithm is introduced to mine a discriminate subset of four tuples from all possible key-point combinations. Moreover, a root indexing scheme is designed to enable to detect multiple logos simultaneously. Extensive experiments on three benchmarks demonstrate the superiority of proposed approach over state-of-the-art methods.
机译:由于各种视点或光照条件的变化以及实际中的实时要求,在现实世界的图像中检测徽标是一项艰巨的任务。如果将常规的对象检测方法直接应用于该任务,例如基于零件的模型,则可能会遭受昂贵的计算成本的困扰。与匹配策略相关的有希望的替代三角形结构描述符提供了一种识别徽标的有效方法。但是,描述符无法旋转通常在视点发生变化时出现的徽标图像旋转。为了克服这个缺点,我们在本文中提出了一种新的基于树的形状描述符(TSD),它对于真实世界图像中的仿射变换严格不变。提出的描述符的核心是通过描述四个局部关键点的外观和空间信息来对徽标的形状进行编码。在训练阶段,引入了一种有效的算法来从所有可能的关键点组合中挖掘出四个元组的可区分子集。此外,根索引方案被设计为能够同时检测多个徽标。在三个基准上进行的大量实验证明了所提出的方法优于最新方法的优越性。

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