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首页> 外文期刊>Neural computing & applications >Convolutional neural networks for computer vision-based detection and recognition of dumpsters
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Convolutional neural networks for computer vision-based detection and recognition of dumpsters

机译:基于计算机视觉的卷积神经网络的倾斜者的检测和识别

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摘要

In this paper, we propose a twofold methodology for visual detection and recognition of different types of city dumpsters, with minimal human labeling of the image data set. Firstly, we carry out transfer learning by using Google Inception-v3 convolutional neural network, which is retrained with only a small subset of labeled images out of the whole data set. This first classifier is then improved with a semi-supervised learning based on retraining for two more rounds, each one increasing the number of labeled images but without human supervision. We compare our approach against both to a baseline case, with no incremental retraining, and the best case, assuming we had a fully labeled data set. We use a data set of 27,624 labeled images of dumpsters provided by Ecoembes, a Spanish nonprofit organization that cares for the environment through recycling and the eco-design of packaging in Spain. Such a data set presents a number of challenges. As in other outdoor visual tasks, there are occluding objects such as vehicles, pedestrians and street furniture, as well as other dumpsters whenever they are placed in groups. In addition, dumpsters have different degrees of deterioration which may affect their shape and color. Finally, 35% of the images are classified according to the capacity of the container, which contains a feature which is hard to assess in a snapshot. Since the data set is fully labeled, we can compare our approach both against a baseline case, doing only the transfer learning using a minimal set of labeled images, and against the best case, using all the labels. The experiments show that the proposed system provides an accuracy of 88%, whereas in the best case it is 93%. In other words, the method proposed attains 94% of the best performance.
机译:在本文中,我们提出了一种双重的方法,用于视觉检测和识别不同类型的城市垃圾箱,具有最小的图像数据集的人类标记。首先,我们通过使用Google Inception-V3卷积神经网络进行转移学习,该神经网络仅通过整个数据集中的标记图像的小子集进行再培训。然后基于再次刷新的半监督学习,该第一分类器改进了两个轮,每一个增加标记图像的数量但没有人为监督。我们将我们的方法与两者对基线案例进行比较,没有增量再培训,并且假设我们有一个完全标记的数据集。我们使用由Ecoembes提供的27,624个标记图像的数据集,这是一个由西班牙非营利组织提供的西班牙非营利组织,通过回收和西班牙包装的生态设计来关心环境。这种数据集具有许多挑战。与其他户外视觉任务一样,随着车辆,行人和街道家具等封闭物品,以及其他垃圾箱随身携带。此外,垃圾箱具有不同程度的劣化,这可能影响它们的形状和颜色。最后,根据容器的容量分类了35%的图像,其中包含一个很难在快照中评估的功能。由于数据集已完全标记,我们可以将我们的方法与基线案例进行比较,仅使用最小的标记图像,以及使用所有标签来使用最小的标记图像的传输学习。实验表明,该系统提供了88%的准确性,而在最佳情况下,它是93%。换句话说,该方法提出了最佳性能的94%。

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