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Part-based recognition of vehicle make and model

机译:基于零件的车辆品牌和型号识别

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Fine-grained recognition is a challenge that the computer vision community faces nowadays. The main category of the object is known in this problem and the goal is to determine the subcategory or fine-grained category. Vehicle make and model recognition (VMMR) is a hard fine-grained classification problem, due to the large number of classes, substantial inner-class and small inter-class distance. In this study, a novel approach has been proposed for VMMR based on latent SVM formulation. This approach automatically finds a set of discriminative parts in each class of vehicles by employing a novel greedy parts localisation algorithm, while learning a model per class using both features extracted from these parts and the spatial relationship between them. An effective and practical multi-class data mining method is proposed to filter out hard negative samples in the training procedure. Employing these trained individual models together, the authors' system can classify vehicles make and model with a high accuracy. For evaluation purposes, a new dataset including more than 5000 vehicles of 28 different makes and models has been collected and fully annotated. The experimental results on this dataset and the CompCars dataset indicate the outstanding performance of the authors' approach.
机译:细粒度的识别是当今计算机视觉社区面临的挑战。在此问题中,对象的主要类别是已知的,目标是确定子类别或细粒度类别。车辆制造和模型识别(VMMR)是一个困难的细粒度分类问题,这归因于类别数量众多,内部类别丰富且类别间距离较小。在这项研究中,已经提出了一种基于潜在SVM公式的VMMR新方法。该方法通过采用新颖的贪婪零件定位算法自动在每类车辆中找到一组区分零件,同时使用从这些零件中提取的特征及其之间的空间关系来学习每类车辆的模型。提出了一种有效,实用的多类数据挖掘方法,用于在训练过程中滤除硬性阴性样本。通过将这些训练有素的个人模型一起使用,作者的系统可以对车辆制造和模型进行高精度分类。为了评估的目的,已经收集了一个新的数据集,其中包括5000多种具有28种不同品牌和型号的车辆,并进行了完全注释。在该数据集和CompCars数据集上的实验结果表明了作者方法的出色表现。

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