2022
DOI: 10.48550/arxiv.2203.05469
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Prediction-Guided Distillation for Dense Object Detection

Abstract: Real-world object detection models should be cheap and accurate. Knowledge distillation (KD) can boost the accuracy of a small, cheap detection model by leveraging useful information from a larger teacher model. However, a key challenge is identifying the most informative features produced by the teacher for distillation. In this work, we show that only a very small fraction of features within a groundtruth bounding box are responsible for a teacher's high detection performance. Based on this, we propose Predi… Show more

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References 34 publications
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