BadDet: Backdoor Attacks on Object Detection
Shih-Han Chan, Yinpeng Dong, Jun Zhu, Xiaolu Zhang, Jun Zhou

TL;DR
This paper introduces four novel backdoor attack methods on object detection models, demonstrating their effectiveness and resilience against fine-tuning, and proposes a runtime detection framework called Detector Cleanse.
Contribution
It presents four new backdoor attack techniques specific to object detection and a novel entropy-based detection method to identify poisoned samples during deployment.
Findings
Backdoor attacks can manipulate object detection outputs in various ways.
Fine-tuning does not effectively remove backdoors from trained models.
The proposed Detector Cleanse can reliably detect poisoned samples in real-time.
Abstract
Deep learning models have been deployed in numerous real-world applications such as autonomous driving and surveillance. However, these models are vulnerable in adversarial environments. Backdoor attack is emerging as a severe security threat which injects a backdoor trigger into a small portion of training data such that the trained model behaves normally on benign inputs but gives incorrect predictions when the specific trigger appears. While most research in backdoor attacks focuses on image classification, backdoor attacks on object detection have not been explored but are of equal importance. Object detection has been adopted as an important module in various security-sensitive applications such as autonomous driving. Therefore, backdoor attacks on object detection could pose severe threats to human lives and properties. We propose four kinds of backdoor attacks for object…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning · Anomaly Detection Techniques and Applications
MethodsAverage Pooling · Global Average Pooling · 1x1 Convolution · k-Means Clustering · Batch Normalization · Residual Connection · Convolution · Softmax · Logistic Regression · BNB Customer Service Number +1-833-534-1729
