Comparison of the YOLOv3 and SSD MobileNet v2 Algorithms for Identifying Objects in Images from an Indoor Robotics Dataset

Adriana Carrillo Rios, Douglas Henke dos Reis, Rodrigo Mattos da Silva, Marco Antonio de Souza Leite Cuadros, D. Gamarra
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引用次数: 8

Abstract

The YOLO and SSD algorithms are tools widely used for detecting objects in images or videos. This is due to the speed of detection and good performance in the identification of objects. This article presents a comparison of the YOLOv3 and SSD MobileNet v2 algorithms for identifying objects in images through simulations, the dataset used is an indoor robotics dataset. In order to reach the objective, several training sessions were carried out to analyze the behavior of each model when detecting objects in images. After analyzing the results, a better performance of the YOLOv3 model was observed, although this model takes more time to complete the training for the same number of steps compared to the SSD MobileNet v2 model. It is worth mentioning that this work presents for the first time a comparison between the SSD MobileNet v2 and YOLOv3 algorithms.
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基于YOLOv3和SSD MobileNet v2的室内机器人图像目标识别算法比较
YOLO和SSD算法是广泛用于检测图像或视频中的物体的工具。这是由于检测速度快,在物体识别方面性能好。本文通过仿真比较了YOLOv3和SSD MobileNet v2算法用于识别图像中的物体,使用的数据集是室内机器人数据集。为了达到目标,进行了几次训练,分析了每个模型在检测图像中物体时的行为。在分析结果后,YOLOv3模型的性能更好,尽管该模型在相同步数下完成训练所需的时间比SSD MobileNet v2模型要长。值得一提的是,这项工作首次提出了SSD MobileNet v2和YOLOv3算法之间的比较。
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