基于误差驱动三元组的跨背景图像分类在线微调

Sheng-Luen Chung, Wei-Ting Guo
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引用次数: 0

摘要

图像分类是计算机视觉中的一项基本任务,具有许多实际应用。然而,在一组图像上训练的分类模型在另一组图像上测试时可能表现不佳,特别是当两组图像的背景环境不同时。为了解决这一挑战,我们提出了一种基于错误驱动的三联集的在线微调方法,该方法利用错误分类的样本在收集到足够的错误分类样本时间隔改进分类模型。我们的方法建立在三重网络架构上,它学习在低维空间中表示具有相同标签的图像聚集在一起的图像。我们使用了一个预训练的分类模型,该模型是在来自一个背景场景的180种图像的集合上训练的。然而,当我们将该模型应用于具有其他类型图像的新背景场景时,由于域移位,其性能受到影响。我们提出的方法利用错误分类的样本,将它们与正样本和负样本作为三重数据进行对比,以微调新背景场景中的模型。我们使用一个结合三重损失和分类损失的损失函数来更新模型权重。我们在两个具有不同背景环境的具有挑战性的图像分类数据集上评估了我们的方法。实验结果表明,与未经微调的基线分类模型相比,我们的方法在准确率上取得了显著的提高。总的来说,我们基于错误驱动的三联体在线微调方法在使分类模型适应新的背景和新的分类类型方面显示了有希望的结果,其中预训练模型的性能是有限的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Error-Driven Triplet-Based Online Fine-Tuning for Cross-Background Image Classification
Image classification is a fundamental task in computer vision with numerous real-world applications. However, classification models trained on one set of images may not perform well when tested on another set, especially when the two sets differ in terms of the background environment. To address this challenge, we propose an error-driven triplet-based online fine-tuning approach that leverages misclassified samples to refine the classification model at intervals when enough misclassified samples are collected. Our approach builds on the triplet network architecture, which learns to represent images in a low-dimensional space where images with the same label are clustered together. We use a pre-trained classification model that was trained on a collection of 180 types of images from one background scene. However, when we apply the model to a new background scene with additional types of images, its performance is compromised due to the domain shift. Our proposed approach leverages the misclassified samples by contrast them with positive and negative samples as triplet data to fine-tune the model in new background scene. We use a loss function that combines the triplet loss and the classification loss to update the model weights. We evaluate our approach on two challenging image classification datasets with different background environments. The experimental results demonstrate that our approach achieves significant improvements in accuracy compared to the baseline classification model without fine-tuning. Overall, our error-driven triplet-based online fine-tuning approach shows promising results for adapting classification models to changing background with additionally new classification types, where the performance of pre-trained models is limited.
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