Cell Detection from Imperfect Annotation by Pseudo Label Selection Using
P-classification
- URL: http://arxiv.org/abs/2107.09289v2
- Date: Wed, 21 Jul 2021 04:28:59 GMT
- Title: Cell Detection from Imperfect Annotation by Pseudo Label Selection Using
P-classification
- Authors: Kazuma Fujii, Daiki Suehiro, Kazuya Nishimura, Ryoma Bise
- Abstract summary: We propose a pseudo labeling approach for cell detection from imperfect annotated data.
A detection convolutional neural network (CNN) trained using such missing labeled data often produces over-detection.
Experiments using microscopy images for five different conditions demonstrate the effectiveness of the proposed method.
- Score: 9.080472817672264
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Cell detection is an essential task in cell image analysis. Recent deep
learning-based detection methods have achieved very promising results. In
general, these methods require exhaustively annotating the cells in an entire
image. If some of the cells are not annotated (imperfect annotation), the
detection performance significantly degrades due to noisy labels. This often
occurs in real collaborations with biologists and even in public data-sets. Our
proposed method takes a pseudo labeling approach for cell detection from
imperfect annotated data. A detection convolutional neural network (CNN)
trained using such missing labeled data often produces over-detection. We treat
partially labeled cells as positive samples and the detected positions except
for the labeled cell as unlabeled samples. Then we select reliable pseudo
labels from unlabeled data using recent machine learning techniques;
positive-and-unlabeled (PU) learning and P-classification. Experiments using
microscopy images for five different conditions demonstrate the effectiveness
of the proposed method.
Related papers
- Unlearnable Examples Detection via Iterative Filtering [84.59070204221366]
Deep neural networks are proven to be vulnerable to data poisoning attacks.
It is quite beneficial and challenging to detect poisoned samples from a mixed dataset.
We propose an Iterative Filtering approach for UEs identification.
arXiv Detail & Related papers (2024-08-15T13:26:13Z) - A noisy elephant in the room: Is your out-of-distribution detector robust to label noise? [49.88894124047644]
We take a closer look at 20 state-of-the-art OOD detection methods.
We show that poor separation between incorrectly classified ID samples vs. OOD samples is an overlooked yet important limitation of existing methods.
arXiv Detail & Related papers (2024-04-02T09:40:22Z) - Cell Tracking-by-detection using Elliptical Bounding Boxes [0.0]
This work proposes a new approach based on the classical tracking-by-detection paradigm.
It approximates the cell shapes as oriented ellipses and then uses generic-purpose oriented object detectors to identify the cells in each frame.
Our results show that our method can achieve detection and tracking results competitively with state-of-the-art techniques.
arXiv Detail & Related papers (2023-10-07T18:47:17Z) - Positive-unlabeled learning for binary and multi-class cell detection in
histopathology images with incomplete annotations [0.7874708385247353]
To train CNN-based cell detection models, every positive instance in the training images needs to be annotated.
In many cases, only incomplete annotations are available, where some of the positive instances are annotated and the others are not.
We propose to reformulate the training of the detection network as a positive-unlabeled learning problem.
arXiv Detail & Related papers (2023-02-16T03:12:04Z) - Dist-PU: Positive-Unlabeled Learning from a Label Distribution
Perspective [89.5370481649529]
We propose a label distribution perspective for PU learning in this paper.
Motivated by this, we propose to pursue the label distribution consistency between predicted and ground-truth label distributions.
Experiments on three benchmark datasets validate the effectiveness of the proposed method.
arXiv Detail & Related papers (2022-12-06T07:38:29Z) - Seamless Iterative Semi-Supervised Correction of Imperfect Labels in
Microscopy Images [57.42492501915773]
In-vitro tests are an alternative to animal testing for the toxicity of medical devices.
Human fatigue plays a role in error making, making the use of deep learning appealing.
We propose Seamless Iterative Semi-Supervised correction of Imperfect labels (SISSI)
Our method successfully provides an adaptive early learning correction technique for object detection.
arXiv Detail & Related papers (2022-08-05T18:52:20Z) - Semi-supervised Cell Detection in Time-lapse Images Using Temporal
Consistency [10.20554144865699]
We propose a semi-supervised cell-detection method that effectively uses a time-lapse sequence with one labeled image and the other images unlabeled.
First, we train a cell-detection network with a one-labeled image and estimate the unlabeled images with the trained network.
We then select high-confidence positions from the estimations by tracking the detected cells from the labeled frame to those far from it.
arXiv Detail & Related papers (2021-07-19T06:40:47Z) - Positive-unlabeled Learning for Cell Detection in Histopathology Images
with Incomplete Annotations [1.1470070927586016]
We formulate the training of detection networks as a positive-unlabeled learning problem.
Experiments were performed on a publicly available dataset for mitosis detection in breast cancer cells.
arXiv Detail & Related papers (2021-06-30T09:20:25Z) - A Novel Perspective for Positive-Unlabeled Learning via Noisy Labels [49.990938653249415]
This research presents a methodology that assigns initial pseudo-labels to unlabeled data which is used as noisy-labeled data, and trains a deep neural network using the noisy-labeled data.
Experimental results demonstrate that the proposed method significantly outperforms the state-of-the-art methods on several benchmark datasets.
arXiv Detail & Related papers (2021-03-08T11:46:02Z) - Learning with Out-of-Distribution Data for Audio Classification [60.48251022280506]
We show that detecting and relabelling certain OOD instances, rather than discarding them, can have a positive effect on learning.
The proposed method is shown to improve the performance of convolutional neural networks by a significant margin.
arXiv Detail & Related papers (2020-02-11T21:08:06Z)
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.