基于滑动窗口矩特征匹配的自动标注算法

Huang Liang, Fengxiang Wang, Luo Bing, Deying Yu, Jiuhe Wang
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引用次数: 1

摘要

在大数据时代,基于海量数据源的目标检测与识别是一项非常重要的任务。目前,大规模图像数据的标注大多依赖于传统的人工标注方法,耗时长,效率低。为了高效构建大规模海上目标图像数据集,提出了一种自动标注算法,即:基于矩特征的自动标注算法。通过实验验证了自动标注算法对图像数据进行标注的准确性,最终证明我们提出的两种图像自动标注算法能够更高效地构建海洋目标图像数据集,为下游任务提供良好的数据支持。
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Automatic annotation algorithm based on sliding window moment feature matching
In the era of big data, detecting and identifying targets based on massive data sources is a very important task. At present, most of the labeling of large-scale image data relies on traditional manual labeling methods, which takes a long time and is inefficient. In order to efficiently construct large-scale maritime target image data sets, we propose an automatic annotation algorithms, namely: automatic annotation algorithm based on moment features. Experiments were conducted to verify the accuracy of the automatic annotation algorithm to annotate image data, and finally proved that the two image automatic annotation algorithms proposed by us can construct the marine target image data set more efficiently, and provide good data support for downstream tasks.
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