不同日照强度下的船舶目标识别

Kun Liu, L. Mi
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引用次数: 0

摘要

:在水面目标监测的情况下,在不同的阳光强度下,船舶目标的清晰度往往会随着海面的反射强度而变化,这会导致船舶目标的识别率不稳定,并增加误报率。为此,提出了基于ResNet-50的船舶目标识别算法。首先,它使用ResNet-50网络提取图像特征信息,并对阳光强度变化前后的特征应用阳光鲁棒损失约束,以减少特征差异。然后,利用灰度直方图计算特征的统计矩阵,得到光照对比度、亮度、平滑度、信息、三阶矩阵和熵六个特征,并生成新的特征向量,对阳光强度变化前后的特征再次应用阳光鲁棒损失约束。最后,将这两个约束组合起来形成损失函数,并使用贝叶斯自适应超参数对其进行训练以优化最优权重。实验结果表明,该数据库对船舶日照变化的平均识别率达到90.47%,约为4.00%,对日照变化为和的船舶图像的识别率分别提高了3.14%、6.07%和16.41%,表明该算法对日照变化有很好的约束作用,识别率显著提高。
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Ship Target Recognition Under Different Sunlight Intensity
: In the case of surface target monitoring, the clarity of the ship target often varies with the reflec-tion intensity of the sea surface under different sunlight intensity, which will lead to the unstable recognition rate of the ship target and increase the false alarm rate. For this reason, the ship target recognition algorithm based on ResNet-50 is proposed. Firstly, it uses ResNet-50 network to extract image feature information and applies sunlight robust loss constraint to the features before and after sunlight intensity change to reduce the feature difference. Then, it uses gray-scale histogram to calculate the statistical matrices of features to obtain six features: light contrast, brightness, smoothness, information, third-order matrices and entropy, and gen-erates new feature vector to apply sunlight robust loss constraint to the features before and after sunlight intensity change again. Finally, the two constraints are combined to form a loss function and trained to opti-mize the optimal weights using Bayesian adaptive hyperparameters. The experimental results show that the average recognition rate of the database for ship sunlight variation reaches 90.47%, which is about 4.00% the and the recognition rate of ship images with sunlight variation of and increases by 3.14%, 6.07% and 16.41%, shows that the algorithm has a good constraint effect on sunlight variation and the recognition rate is significantly improved.
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来源期刊
计算机辅助设计与图形学学报
计算机辅助设计与图形学学报 Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.20
自引率
0.00%
发文量
6833
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