An automated design data archiving could reduce the time wasted by designers from working creatively and effectively. Though many datasets on classifying, detecting, and instance segmenting on car exterior exist, these large datasets are not relevant for design practices as the primary purpose lies in autonomous driving or vehicle verification. Therefore, we release GP22, composed of car styling features defined by automotive designers. The dataset contains 1480 car side profile images from 37 brands and ten car segments. It also contains annotations of design features that follow the taxonomy of the car exterior design features defined in the eye of the automotive designer. We trained the baseline model using YOLO v5 as the design feature detection model with the dataset. The presented model resulted in an mAP score of 0.995 and a recall of 0.984. Furthermore, exploration of the model performance on sketches and rendering images of the car side profile implies the scalability of the dataset for design purposes.
翻译:自动设计数据存档可以减少设计师创造性和有效工作所浪费的时间。虽然在汽车外部分类、探测和实例分类方面有许多数据集存在,但这些大型数据集与设计做法无关,因为主要目的在于自主驾驶或车辆核查。因此,我们发布GP22,由汽车设计师定义的汽车装配特征组成。数据集包含37个品牌和10个汽车区段的1480个汽车侧侧侧剖面图像。该数据集还载有汽车设计师眼中界定的汽车外部设计特征分类后的设计特征说明。我们用YOLO v5作为数据集设计特征探测模型,对基线模型进行了培训。所展示的模型得出了0.995 mAP分和0.984重记。此外,对轮廓的模型性能和汽车侧侧侧面图图的探索意味着数据集可用于设计目的的可缩放性。