Towards Noise-resistant Object Detection with Noisy Annotations
- URL: http://arxiv.org/abs/2003.01285v1
- Date: Tue, 3 Mar 2020 01:32:16 GMT
- Title: Towards Noise-resistant Object Detection with Noisy Annotations
- Authors: Junnan Li, Caiming Xiong, Richard Socher, Steven Hoi
- Abstract summary: Training deep object detectors requires significant amount of human-annotated images with accurate object labels and bounding box coordinates.
Noisy annotations are much more easily accessible, but they could be detrimental for learning.
We address the challenging problem of training object detectors with noisy annotations, where the noise contains a mixture of label noise and bounding box noise.
- Score: 119.63458519946691
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Training deep object detectors requires significant amount of human-annotated
images with accurate object labels and bounding box coordinates, which are
extremely expensive to acquire. Noisy annotations are much more easily
accessible, but they could be detrimental for learning. We address the
challenging problem of training object detectors with noisy annotations, where
the noise contains a mixture of label noise and bounding box noise. We propose
a learning framework which jointly optimizes object labels, bounding box
coordinates, and model parameters by performing alternating noise correction
and model training. To disentangle label noise and bounding box noise, we
propose a two-step noise correction method. The first step performs
class-agnostic bounding box correction by minimizing classifier discrepancy and
maximizing region objectness. The second step distils knowledge from dual
detection heads for soft label correction and class-specific bounding box
refinement. We conduct experiments on PASCAL VOC and MS-COCO dataset with both
synthetic noise and machine-generated noise. Our method achieves
state-of-the-art performance by effectively cleaning both label noise and
bounding box noise. Code to reproduce all results will be released.
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