基于卷积神经网络的RGB图像多目标识别

Md. Ashfakur Rahman, Subhra Paul, Mrinmoy Das, M. M. Hossain, Rejwana Haque, Md.Atiqur Rahman
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引用次数: 2

摘要

随着时间的流逝,不同类型的智能系统在安全、医疗操作、检测关键疾病、空间研究、工业重型工程、自动车辆等许多领域的应用在世界各地都在增加,智能系统通过使用其图像识别能力来工作。此外,在我们今天所做的大多数工作中,图像识别已经成为数字系统范围内一个值得注意的主题。此外,从物理世界中获得高维数据,以便通过图像识别产生统计或代表性知识。在本研究中,我们推荐了一种突变图像识别技术。利用训练好的卷积神经网络对不同图像中的不同物体进行识别,并对卷积神经网络的准确率进行测量,以检验系统的性能。图像识别精度的评估是该工作的主要延续,该工作是通过修改反向传播中的权值更新系统来完成的。我们在工作中使用了小的卷积滤波器。我们在这项工作中试图证明,通过修改权值更新系统,可以在图像识别方面取得重要进展,并将其应用于卷积神经网络。Inception-v3是为ImageNet大型视觉识别挑战训练的,我们在工作中使用了它,我们发现我们的结果更好。有人指出,从我们设计的系统中得出的结果的正确性远远好于目前的标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Convolutional Neural Networks based multi-object recognition from a RGB image
With the flow of time, the application of different kinds of intelligent systems in many sectors like security, medical operations, detecting critical diseases, space researches, industrial heavy works, automated vehicles, and many others are increasing all over the of the world, and an intelligent system works by the use of its ability of image recognition. Furthermore, image recognition has been a notable subject in the scope of digital systems in most of the works we do today. Moreover, high-dimensional data from the physical world is obtained in order to produce statistical or representative knowledge by image recognition. In this study, a mutated image recognition technique has been recommended. For the work, different objects from different images were recognized by using a trained convolutional neural network and also the accuracy of the convolutional neural network was measured to examine the performance of the system. The evaluation of the accuracy of image recognition is the main continuation of this work which was done by modifying the system of updating weights in back-propagation. We used small filters of convolution in our work. We tried in this work to demonstrate that by modifying the weight updating system a vital advancement can be reached for greater efficiency in image recognition and applying it the convolutional neural network. Inception-v3, which is trained for the ImageNet Large Visual Recognition Challenge was used in our work and we found our results to be better. It was also pointed that the correctness of the outcomes from our designed system is far better than the state-of-art standards.
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