Object-Based Vehicle Color Recognition in Uncontrolled Environment

Panumate Chetprayoon, Theerat Sakdejayont, Monchai Lertsutthiwong
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Abstract

The demand for vehicle recognition significantly increases with impact on many businesses in recent decades. This paper focuses on a vehicle color attribute. A novel method for vehicle color recognition is introduced to overcome three challenges of vehicle color recognition. The first challenge is an uncontrolled environment such as shadow, brightness, and reflection. Second, similar color is hard to be taken into account. Third, few research works dedicate to multi-color vehicle recognition. Previous works can provide only color information of the whole vehicle, but not at vehicle part level. In this study, a new approach for recognizing the colors of vehicles at the part level is introduced. It utilizes object detection techniques to identify the colors based on the different objects (e.g. parts of a vehicle in this research). In addition, a novel generic post-processing is proposed to improve robustness in the uncontrolled environment and support not only single-color but also multi-color vehicles. Experimental results show that it can effectively identify the color under the three challenges addressed above with 99 % accuracy for single-color vehicle and outperforms the other seven baseline models, and 76 % accuracy for multi-color vehicle.
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非受控环境下基于目标的车辆颜色识别
近几十年来,对车辆识别的需求显著增加,对许多企业产生了影响。本文主要研究车辆颜色属性。提出了一种新的车辆颜色识别方法,克服了车辆颜色识别的三大难题。第一个挑战是一个不受控制的环境,如阴影、亮度和反射。其次,相似的颜色很难被考虑在内。第三,针对多色车辆识别的研究较少。以往的作品只能提供整车的颜色信息,而不能提供整车部件层面的颜色信息。在本研究中,提出了一种在零件层面上识别车辆颜色的新方法。它利用物体检测技术来识别基于不同物体的颜色(例如在本研究中车辆的部件)。此外,提出了一种新的通用后处理方法,以提高非受控环境下的鲁棒性,不仅支持单色车辆,也支持多色车辆。实验结果表明,在上述三种挑战下,该模型对单色车辆的识别准确率为99%,优于其他7种基准模型,对多色车辆的识别准确率为76%。
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