Analyzing and Mitigating Bias for Vulnerable Road Users by Addressing Class Imbalance in Datasets

IF 4.6 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Dewant Katare;David Solans Noguero;Souneil Park;Nicolas Kourtellis;Marijn Janssen;Aaron Yi Ding
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Abstract

Vulnerable road users (VRUs), including pedestrians, cyclists, and motorcyclists, account for approximately 50% of road traffic fatalities globally, as per the World Health Organization. In these scenarios, the accuracy and fairness of perception applications used in autonomous driving become critical to reduce such risks. For machine learning models, performing object classification and detection tasks, the focus has been on improving accuracy and enhancing model performance metrics; however, issues such as biases inherited in models, statistical imbalances and disparities within the datasets are often overlooked. Our research addresses these issues by exploring class imbalances among vulnerable road users by focusing on class distribution analysis, evaluating model performance, and bias impact assessment. Using popular CNN models and Vision Transformers (ViTs) with the nuScenes dataset, our performance evaluation shows detection disparities for underrepresented classes. Compared to related work, we focus on metric-specific and cost-sensitive learning for model optimization and bias mitigation, which includes data augmentation and resampling. Using the proposed mitigation approaches, we see improvement in IoU(%) and NDS(%) metrics from 71.3 to 75.6 and 80.6 to 83.7 for the CNN model. Similarly, for ViT, we observe improvement in IoU and NDS metrics from 74.9 to 79.2 and 83.8 to 87.1. This research contributes to developing reliable models while addressing inclusiveness for minority classes in datasets. Code can be accessed at: BiasDet.
通过处理数据集中的类别不平衡分析和减轻弱势道路使用者的偏见
根据世界卫生组织的数据,弱势道路使用者,包括行人、骑自行车的人和骑摩托车的人,约占全球道路交通死亡人数的50%。在这些情况下,自动驾驶中使用的感知应用程序的准确性和公平性对于降低此类风险至关重要。对于机器学习模型,执行对象分类和检测任务,重点是提高准确性和增强模型性能指标;然而,诸如模型中遗传的偏差、统计不平衡和数据集中的差异等问题往往被忽视。我们的研究通过关注阶级分布分析、评估模型性能和偏见影响评估来探索弱势道路使用者的阶级不平衡,从而解决了这些问题。使用流行的CNN模型和带有nuScenes数据集的视觉变形器(ViTs),我们的性能评估显示了对代表性不足的类别的检测差异。与相关工作相比,我们专注于模型优化和偏差缓解的度量特定和成本敏感学习,包括数据增强和重采样。使用拟议的缓解方法,我们看到CNN模型的IoU(%)和NDS(%)指标从71.3提高到75.6,从80.6提高到83.7。同样,对于ViT,我们观察到IoU和NDS指标从74.9提高到79.2,从83.8提高到87.1。这项研究有助于开发可靠的模型,同时解决数据集中少数族裔的包容性问题。代码可以在BiasDet上访问。
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CiteScore
5.40
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