ChandraRekha Rayapureddy, G. Jayalakshmi, Bade Kranthi Priya, Divyasri Munugumati
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引用次数: 0
摘要
在许多应用中,目标检测是一项非常困难的任务。目前,许多作者正在尝试开发新的研究应用程序来寻找图像和视频中的对象。在图像中,静态对象被识别,而在视频中,动态对象被识别,称为运动对象。深度学习和人工智能在寻找图像和视频中的物体方面发挥着重要作用。因此,为了检测来自不同来源的物体,开发了许多现有的方法。在实时应用中,对象检测也可用于发现恶意对象。本文建立了一个集成模型,从给定的输入中找到精确的目标。该集成模型是YOLOV3 (You Only Look Once)和卷积神经网络(CNN)的结合。本文使用的数据集为COCO-2017,收集自网络资源。通过与现有几种方法的比较,分析了该方法的性能。
Ensemble Learning Model for Object Detection in Image and Videos
Object detection is a very difficult task in many applications. Presently many authors are trying to develop new research applications to find the objects in Images and videos. In images, static objects are identified and in videos, dynamic objects are identified which are called moving objects. Deep Learning and Artificial intelligence playa major role in finding the objects in Images and also in Videos. So many existing methods are developed for the detection of objects from various sources. In real-time applications, obj ect detection can be used to find malicious objects also. In this paper, an ensemble model is developed to find the accurate objects from the given inputs. The ensemble model is the combination of YOLOV3 (You Only Look Once) and a Convolutional neural network (CNN). The dataset used in this paper is COCO-2017 collected from online sources. The performance of the proposed approach is analyzed by comparing it with the several existing approaches.