Improving Learning Effectiveness For Object Detection and Classification in Cluttered Backgrounds

Vinorth Varatharasan, Hyo-Sang Shin, A. Tsourdos, Nick Colosimo
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引用次数: 7

Abstract

Usually, Neural Networks models are trained with a large dataset of images in homogeneous backgrounds. The issue is that the performance of the network models trained could be significantly degraded in a complex and heterogeneous environment. To mitigate the issue, this paper develops a framework that permit to autonomously generate a training dataset in heterogeneous cluttered backgrounds. It is clear that the learning effectiveness of the proposed framework should be improved in complex and heterogeneous environments, compared with the ones with the typical dataset. In our framework, a state-of-the-art image segmentation technique called DeepLab is used to extract objects of interest from a picture and Chroma-key technique is then used to merge the extracted objects of interest into specific heterogeneous backgrounds. The performance of the proposed framework is investigated through empirical tests and compared with that of the model trained with the COCO dataset. The results show that the proposed framework outperforms the model compared. This implies that the learning effectiveness of the framework developed is superior to the models with the typical dataset.
提高杂乱背景下目标检测和分类的学习效率
通常,神经网络模型是用均匀背景下的大量图像数据集来训练的。问题是,在复杂和异构的环境中,训练的网络模型的性能可能会显著下降。为了缓解这个问题,本文开发了一个框架,允许在异构杂乱背景下自主生成训练数据集。很明显,与典型数据集相比,所提出的框架在复杂和异构环境中的学习效率应该得到提高。在我们的框架中,使用最先进的图像分割技术DeepLab从图像中提取感兴趣的对象,然后使用Chroma-key技术将提取的感兴趣的对象合并到特定的异构背景中。通过实证测试考察了该框架的性能,并与COCO数据集训练的模型进行了比较。结果表明,所提出的框架优于模型。这意味着所开发的框架的学习效率优于具有典型数据集的模型。
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