应用现代计算机视觉算法管理图像对象的计数工作

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摘要

本文致力于研究卷积神经网络架构在计算图像中物体数量方面的应用。目前,使用回归法的方法越来越受欢迎。为了使用回归法解决物体计数任务,本文使用了针对图像分类开发的参考卷积神经网络 AlexNet、VGG16 和 ResNet 50 的修改版。修改的方式是将神经网络中负责图像分类的第二部分替换为一个全连接层,该层由一个不带激活函数的神经元组成。在实验中,对参考卷积网络的修改架构进行了如下初始化:使用随机初始化权重和使用在 ImageNet 数据集上训练的预训练权重。实验结果证实了所提模型的性能,以及使用神经可塑性方法来解决回归问题。细菌细胞图像数据库被用作训练和测试材料。
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APPLICATION OF MODERN COMPUTER VISION ALGORITHMS TO MANAGE WITH THE COUNTING OF IMAGE OBJECTS
This article is devoted to the research of convolutional neural network architectures in counting objects in an image. Currently, methods using regression are gaining popularity. In this article in order to solve an object counting task using regression method, modifications of the reference convolutional neural networks AlexNet, VGG16, and ResNet 50, which were developed for image classification, were used. Modification presented by replacing the second part of the neural network, which classifies images, with one fully connected layer, consisting of one neuron without activating function. In experiments, modified architectures of the reference convolutional networks were initialized as folows: using random initialization of the weights and using pretrainedined weights trained on the ImageNet dataset. The results of experiments, which confirm the performance of the proposed models and the use of the neuroplasticity method to solve the problem using regression are preented. The database of images of bacterial cells was used as training and testing material.
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