DSLA: Dynamic smooth label assignment for efficient anchor-free object
detection
- URL: http://arxiv.org/abs/2208.00817v1
- Date: Mon, 1 Aug 2022 12:56:44 GMT
- Title: DSLA: Dynamic smooth label assignment for efficient anchor-free object
detection
- Authors: Hu Su, Yonghao He, Jiabin Zhang, Wei Zou, Bin Fan
- Abstract summary: Anchor-free detectors basically formulate object detection as dense classification and regression.
It is common to introduce an individual prediction branch to estimate the quality of localization.
The following inconsistencies are observed when we delve into the practices of classification and quality estimation.
- Score: 18.043176234010517
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Anchor-free detectors basically formulate object detection as dense
classification and regression. For popular anchor-free detectors, it is common
to introduce an individual prediction branch to estimate the quality of
localization. The following inconsistencies are observed when we delve into the
practices of classification and quality estimation. Firstly, for some adjacent
samples which are assigned completely different labels, the trained model would
produce similar classification scores. This violates the training objective and
leads to performance degradation. Secondly, it is found that detected bounding
boxes with higher confidences contrarily have smaller overlaps with the
corresponding ground-truth. Accurately localized bounding boxes would be
suppressed by less accurate ones in the Non-Maximum Suppression (NMS)
procedure. To address the inconsistency problems, the Dynamic Smooth Label
Assignment (DSLA) method is proposed. Based on the concept of centerness
originally developed in FCOS, a smooth assignment strategy is proposed. The
label is smoothed to a continuous value in [0, 1] to make a steady transition
between positive and negative samples. Intersection-of-Union (IoU) is predicted
dynamically during training and is coupled with the smoothed label. The dynamic
smooth label is assigned to supervise the classification branch. Under such
supervision, quality estimation branch is naturally merged into the
classification branch, which simplifies the architecture of anchor-free
detector. Comprehensive experiments are conducted on the MS COCO benchmark. It
is demonstrated that, DSLA can significantly boost the detection accuracy by
alleviating the above inconsistencies for anchor-free detectors. Our codes are
released at https://github.com/YonghaoHe/DSLA.
Related papers
- CSOT: Curriculum and Structure-Aware Optimal Transport for Learning with
Noisy Labels [13.807759089431855]
Learning with noisy labels (LNL) poses a significant challenge in training a well-generalized model.
Recent advances have achieved impressive performance by identifying clean labels and corrupted labels for training.
We propose a novel optimal transport (OT) formulation, called Curriculum and Structure-aware Optimal Transport (CSOT)
arXiv Detail & Related papers (2023-12-11T09:12:50Z) - Ambiguity-Resistant Semi-Supervised Learning for Dense Object Detection [98.66771688028426]
We propose a Ambiguity-Resistant Semi-supervised Learning (ARSL) for one-stage detectors.
Joint-Confidence Estimation (JCE) is proposed to quantifies the classification and localization quality of pseudo labels.
ARSL effectively mitigates the ambiguities and achieves state-of-the-art SSOD performance on MS COCO and PASCAL VOC.
arXiv Detail & Related papers (2023-03-27T07:46:58Z) - Mitigating the Mutual Error Amplification for Semi-Supervised Object
Detection [92.52505195585925]
We propose a Cross Teaching (CT) method, aiming to mitigate the mutual error amplification by introducing a rectification mechanism of pseudo labels.
In contrast to existing mutual teaching methods that directly treat predictions from other detectors as pseudo labels, we propose the Label Rectification Module (LRM)
arXiv Detail & Related papers (2022-01-26T03:34:57Z) - S3: Supervised Self-supervised Learning under Label Noise [53.02249460567745]
In this paper we address the problem of classification in the presence of label noise.
In the heart of our method is a sample selection mechanism that relies on the consistency between the annotated label of a sample and the distribution of the labels in its neighborhood in the feature space.
Our method significantly surpasses previous methods on both CIFARCIFAR100 with artificial noise and real-world noisy datasets such as WebVision and ANIMAL-10N.
arXiv Detail & Related papers (2021-11-22T15:49:20Z) - Rethinking Pseudo Labels for Semi-Supervised Object Detection [84.697097472401]
We introduce certainty-aware pseudo labels tailored for object detection.
We dynamically adjust the thresholds used to generate pseudo labels and reweight loss functions for each category to alleviate the class imbalance problem.
Our approach improves supervised baselines by up to 10% AP using only 1-10% labeled data from COCO.
arXiv Detail & Related papers (2021-06-01T01:32:03Z) - Coping with Label Shift via Distributionally Robust Optimisation [72.80971421083937]
We propose a model that minimises an objective based on distributionally robust optimisation (DRO)
We then design and analyse a gradient descent-proximal mirror ascent algorithm tailored for large-scale problems to optimise the proposed objective.
arXiv Detail & Related papers (2020-10-23T08:33:04Z) - Reducing Label Noise in Anchor-Free Object Detection [12.397047191315966]
Current anchor-free object detectors label all the features that spatially fall inside a predefined central region as positive.
We propose a new labeling strategy aimed to reduce the label noise in anchor-free detectors.
We develop a new one-stage, anchor-free object detector, PPDet, to employ this labeling strategy during training and a similar prediction pooling method during inference.
arXiv Detail & Related papers (2020-08-03T20:02:46Z) - Probabilistic Anchor Assignment with IoU Prediction for Object Detection [9.703212439661097]
In object detection, determining which anchors to assign as positive or negative samples, known as anchor assignment, has been revealed as a core procedure that can significantly affect a model's performance.
We propose a novel anchor assignment strategy that adaptively separates anchors into positive and negative samples for a ground truth bounding box according to the model's learning status.
arXiv Detail & Related papers (2020-07-16T04:26:57Z) - Generalized Focal Loss: Learning Qualified and Distributed Bounding
Boxes for Dense Object Detection [85.53263670166304]
One-stage detector basically formulates object detection as dense classification and localization.
Recent trend for one-stage detectors is to introduce an individual prediction branch to estimate the quality of localization.
This paper delves into the representations of the above three fundamental elements: quality estimation, classification and localization.
arXiv Detail & Related papers (2020-06-08T07:24:33Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.