Real-Time Image Processing Using Deep Learning With Opencv And Python

Q3 Pharmacology, Toxicology and Pharmaceutics Journal of Pharmaceutical Negative Results Pub Date : 2023-02-11 DOI:10.47750/pnr.2023.14.03.246
Ujjwal Sharma, Tanya Goel, Dr. Jagbeer Singh
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Abstract

The observation of laptop imaginative and prescient aids in the improvement of techniques for figuring out presentations and pictures. It contains a variety of functions, including picture recognition, object identification and image production among others. Face recognition, vehicle recognition, online photos, and safety systems all employ object detection. The goal is to identify things using the You Only Look Once (YOLO) technique. When compared to previous object identification algorithms, our method focuses on a few key areas. Unlike other algorithms, YOLO scans the whole photograph through estimating bounding containers the use of convolutional networks and sophistication possibilities for those containers. This permits YOLO to understand an photograph extra fast than different algorithms together with convolutional neural networks and speedy convolutional neural network. By using dependencies like OpenCV, we can identify each object in an image based on the region object in a distinct rectangular box, identify every item and assign its tag to the item the use of those strategies and algorithms primarily based totally on deep learning, which is likewise primarily based totally on system learning. It moreover consists of the nuances of every item-marking strategy.
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使用Opencv和Python进行深度学习的实时图像处理
对笔记本电脑富有想象力和先见之明的观察有助于改进理解演示文稿和图片的技术。它包含多种功能,包括图片识别、物体识别和图像生成等。人脸识别、车辆识别、在线照片和安全系统都采用了物体检测。目标是使用“你只看一次”(YOLO)技术来识别事物。与以前的目标识别算法相比,我们的方法侧重于几个关键领域。与其他算法不同,YOLO通过估计边界容器来扫描整个照片——卷积网络的使用和这些容器的复杂度可能性。这使得YOLO能够比不同的算法以及卷积神经网络和快速卷积神经网络更快地理解照片。通过使用像OpenCV这样的依赖关系,我们可以基于不同矩形框中的区域对象来识别图像中的每个对象,识别每个项目并将其标签分配给项目——这些策略和算法的使用主要基于深度学习,同样主要基于系统学习。此外,它还包含了每个项目标记策略的细微差别。
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