Object Detection Analysis Study in Images based on Deep Learning Algorithm

Christian Hary, Satria Mandala
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Abstract

Deep learning is a subfield of machine learning. Computer vision is one of the technological advances that utilizes deep learning in image processing, object classification, and object detection. In the Object Detection, there have been various models that can detect objects with different characteristics, and with so many models that have been developed, it takes longer to determine which model is suitable for the needs of a project because it requires comparisons between each model. In this study, an analysis was conducted by comparing three models that utilize Deep Learning to detect car and bus objects, namely Faster-RCNN with ResNet50, SSD with MobileNet, and EfficientDet with D0. Each model is run using TensorFlow Object Detection. The models will be trained using a custom dataset containing of 52 images and will be trained in 3000 steps. Based on experiments, it is known that from the comparison of mAP, Faster-RCNN ResNet50 has the highest score of 0.453, and the lowest is EfficientDet D0 with 0.274; for the comparison of Average Recall, Faster-RCNN ResNet50 has the highest score with 0.337, and the lowest is EfficientDet D0 with 0.190, as well as for model size comparison, EfficientDet D0 has the smallest size with 290 MB, and the largest is Faster-RCNN ResNet50 with 1280 MB.
基于深度学习算法的图像目标检测分析研究
深度学习是机器学习的一个子领域。计算机视觉是在图像处理、对象分类和对象检测中利用深度学习的技术进步之一。在Object Detection中,已经有各种各样的模型可以检测具有不同特征的物体,并且由于已经开发的模型太多,需要对每个模型进行比较,因此需要更长的时间来确定哪个模型适合项目的需要。在这项研究中,通过比较三种利用深度学习来检测汽车和公共汽车物体的模型,即fast - rcnn与ResNet50, SSD与MobileNet,和EfficientDet与D0进行了分析。每个模型都使用TensorFlow对象检测来运行。这些模型将使用包含52张图像的自定义数据集进行训练,并将在3000步中进行训练。通过实验可知,从mAP的对比来看,Faster-RCNN的ResNet50得分最高,为0.453,最低的是EfficientDet D0,为0.274;对于Average Recall的比较,Faster-RCNN ResNet50的得分最高,为0.337,最低的是EfficientDet D0,为0.190,对于模型大小的比较,EfficientDet D0的大小最小,为290 MB,最大的是Faster-RCNN ResNet50,为1280 MB。
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