FCHD: A fast and accurate head detector

@article{Vora2018FCHDAF,
  title={FCHD: A fast and accurate head detector},
  author={Aditya Vora},
  journal={CoRR},
  year={2018},
  volume={abs/1809.08766}
}
In this paper, we propose FCHD-Fully Convolutional Head Detector, which is an end-to-end trainable head detection model, which runs at 5 fps and with 0.70 average precision (AP), on a very modest GPU. Recent head detection techniques have avoided using anchors as a starting point for detection especially in the cases where the detection has to happen in the wild. The reason is poor performance of anchorbased techniques under scenarios where the object size is small. We argue that a good AP can… CONTINUE READING
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