基于改进卷积神经网络的目标识别算法

Zheyi Fan, Yu Song, Wei Li
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引用次数: 2

摘要

为了完成自然场景中的目标识别任务,提出了一种基于改进卷积神经网络(CNN)的目标识别算法。首先,从原始图像中提取候选目标窗口;然后,将候选对象窗口输入到改进的CNN模型中,获得深度特征。最后,将深度特征输入Softmax,得到类的置信度分数。选取置信度得分最高的候选目标窗口作为目标识别结果。基于AlexNet,在改进的CNN中引入盗梦空间V1,用平均池化层代替全连接层,同时拓宽网络,加深网络。实验结果表明,改进的目标识别算法在多幅自然场景图像中可以获得更好的识别效果,在目标识别领域具有比经典算法更高的准确率。
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Object Recognition Algorithm Based on an Improved Convolutional Neural Network
In order to accomplish the task of object recognition in natural scenes, a new object recognition algorithm based on an improved convolutional neural network (CNN) is proposed. First, candidate object windows are extracted from the original image. Then, candidate object windows are input into the improved CNN model to obtain deep features. Finally, the deep features are input into the Softmax and the confidence scores of classes are obtained. The candidate object window with the highest confidence score is selected as the object recognition result. Based on AlexNet, Inception V1 is introduced into the improved CNN and the fully connected layer is replaced by the average pooling layer, which widens the network and deepens the network at the same time. Experimental results show that the improved object recognition algorithm can obtain better recognition results in multiple natural scene images, and has a higher degree of accuracy than the classical algorithms in the field of object recognition.
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