I. Mohamed Elzayat, M. Ahmed Saad, M. Mostafa, R. Mahmoud Hassan, Hossam Abd El Munim, M. Ghoneima, M. Saeed Darweesh, H. Mostafa
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引用次数: 7
摘要
目标深度估计是许多视觉分析系统的基础。近年来,该领域已经取得了相当大的进展,但在现实世界的视频中,鲁棒、高效和精确的深度估计仍然是一个挑战。本文采用的方法是使用单摄像机估计周围汽车的距离。在检测过程中使用YOLO (You Only Look Once)方法,通过生成物体周围的边界框,确定距离与边界框尺寸(高度、宽度)之间的反演比例相关关系。得到所研究变量之间的精确方程;因变量为距离,自变量为YOLO边界框的高度和宽度。在回归模型中引入多元回归技术,避免了异方差和多重共线性问题。实现了23 FPS(帧/秒)的实时检测和深度估计精度80.4%。
Real-Time Car Detection-Based Depth Estimation Using Mono Camera
Object depth estimation is the cornerstone of many visual analytics systems. In recent years there is a considerable progress has been made in this area, while robust, efficient, and precise depth estimation in the real-world video remains a challenge. The approach utilized in this presented paper is to estimate the distance of surrounding cars using a mono camera. Using YOLO (You Only Look Once) in the detection process, by generating a boundary box surrounding the object, then an inversion proportional correlation between the distance and the boundary box’s dimensions (height, width) is ascertained. Getting the exact equation between the studied variables; the dependent variables are the distance, and independent variable is the height and width of YOLO boundary box. In the regression model, multiple regression techniques were acclimated to evade heteroskedasticity and multi-collinearity problems. Achieving a real-time detection with a 23 FPS (Frame Per Second) and depth estimation accuracy 80.4%.