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Add DSR model #1142

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2d4c130
added license, init.py and draft readme
phcarval Jun 12, 2023
e0da4d7
added draft DSR files
phcarval Jun 12, 2023
ca18f04
minor comment update
phcarval Jun 12, 2023
c52e644
Implemented dsr model + comments
phcarval Jun 13, 2023
c139d98
added dsr discrete model
phcarval Jun 13, 2023
19dbc94
added defect generation in torch model + dsr to list of existing meth…
phcarval Jun 14, 2023
88930e6
fixed torch model, started implementing lightning model, implemented …
phcarval Jun 14, 2023
e8fc81f
added loss file for DSR
phcarval Jun 14, 2023
c72c81f
Added loss, improved lightning module
phcarval Jun 14, 2023
64a43a6
Finished up global implementation of DSR second phase
phcarval Jun 14, 2023
689ab08
minor fixes
phcarval Jun 14, 2023
1b7e21b
Bugfixes
phcarval Jun 15, 2023
a2724f2
Fixed DSR loss calculation
phcarval Jun 15, 2023
11e83bc
on_training_start -> on_train_start
phcarval Jun 15, 2023
f15e379
pre-commit run
phcarval Jun 16, 2023
578dff3
updated DSR documentation
phcarval Jun 16, 2023
54e5df0
reset config file
phcarval Jun 16, 2023
cc87eb9
Merge branch 'main' into dsr_dev
phcarval Jun 16, 2023
0ece7e1
added automatic pretraining weight download
phcarval Jun 19, 2023
5b5dd92
testing pretrained weights. fixed embedding size in upsampling module…
phcarval Jun 19, 2023
5132fb8
successful testing on pretrained dsr weights
phcarval Jun 20, 2023
064f151
checked test quality with pretrained weights, fixed anomaly score cal…
phcarval Jun 20, 2023
2774ccf
training is functional
phcarval Jun 21, 2023
a2c2d22
Fixed training procedure
phcarval Jun 21, 2023
614c151
test still working
phcarval Jun 21, 2023
2251333
working upsampling module training and testing
phcarval Jun 21, 2023
6fc6af8
added upsampling module training and testing
phcarval Jun 21, 2023
41f3723
fixed minor bugs
phcarval Jun 21, 2023
e7710f0
updated documentation
phcarval Jun 21, 2023
b6a1492
added tests and doc
phcarval Jun 22, 2023
e916391
adapted learning schedule to steps
phcarval Jun 22, 2023
22f0de8
Merge branch 'main' into dsr_dev
samet-akcay Jun 30, 2023
c378efa
Update src/anomalib/models/dsr/anomaly_generator.py
phcarval Jun 30, 2023
ad37c33
Apply suggestions from code review
phcarval Jun 30, 2023
eb4e1ec
refactored outputs into dicts
phcarval Jun 30, 2023
12e251c
remove super() args
phcarval Jun 30, 2023
fd72739
changed downloading weights from anomalib releases + minor fixes
phcarval Jul 6, 2023
8b4e7ab
pre commit hooks + minor fixes
phcarval Jul 6, 2023
576bfea
removed configurable ckpt path refs + default iteration nb from paper
phcarval Jul 6, 2023
7900288
cleaned up dsr.rst and turned exceptions into RuntimeErrors
phcarval Jul 6, 2023
2fe546f
Added upsampling ratio parameter to set third training phase epochs
phcarval Jul 11, 2023
97fccf4
Added batched evalaution + minor code simplification
phcarval Jul 16, 2023
bb3428e
pre commit hooks
phcarval Jul 16, 2023
70ea665
squeeze output image score tensor
phcarval Jul 24, 2023
d2b6e5a
merged main
phcarval Aug 23, 2023
b80b321
readded new path check in efficient ad
phcarval Aug 23, 2023
2619bb5
Merge branch 'main' into dsr_dev
phcarval Sep 5, 2023
4d40a08
Merge branch 'main' into dsr_dev
samet-akcay Sep 5, 2023
f01bf62
fixed double step count with manual optimization
phcarval Sep 21, 2023
a108445
fixed trailing whitespace
phcarval Sep 21, 2023
c0fd124
Fix black issues
samet-akcay Sep 21, 2023
7a8b73a
Merge branch 'main' into dsr_dev
samet-akcay Sep 22, 2023
e17252a
Apply suggestions from code review
phcarval Sep 22, 2023
c74353c
review suggestions
phcarval Sep 22, 2023
9d5a730
Merge branch 'main' into dsr_dev
samet-akcay Sep 22, 2023
2550a45
updated architecture image links
phcarval Sep 22, 2023
68ff3e9
Address mypy
samet-akcay Sep 22, 2023
9015904
changed output types for dsr model
phcarval Sep 25, 2023
f16ade9
Merge branch 'main' into dsr_dev
samet-akcay Sep 27, 2023
295375c
Merge branch 'main' into dsr_dev
samet-akcay Sep 27, 2023
4970dd3
readded dict outputs, adapted to TorchInferencer
phcarval Sep 27, 2023
88ea5d0
fixed error in output dict
phcarval Sep 30, 2023
d44de50
removed default imagenet norm
phcarval Oct 5, 2023
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1 change: 1 addition & 0 deletions README.md
Original file line number Diff line number Diff line change
Expand Up @@ -106,6 +106,7 @@ where the currently available models are:
- [DFKDE](src/anomalib/models/dfkde)
- [DFM](src/anomalib/models/dfm)
- [DRAEM](src/anomalib/models/draem)
- [DSR](src/anomalib/models/dsr)
- [EfficientAd](src/anomalib/models/efficient_ad)
- [FastFlow](src/anomalib/models/fastflow)
- [GANomaly](src/anomalib/models/ganomaly)
Expand Down
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45 changes: 45 additions & 0 deletions docs/source/reference_guide/algorithms/dsr.rst
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Dsr
------

This is the implementation of the `DSR <https://link.springer.com/chapter/10.1007/978-3-031-19821-2_31>`_ paper.

Model Type: Segmentation

Description
***********

DSR is a quantized-feature based algorithm that consists of an autoencoder with one encoder and two decoders, coupled with an anomaly detection module. DSR learns a codebook of quantized representations on ImageNet, which are then used to encode input images. These quantized representations also serve to sample near-in-distribution anomalies, since they do not rely on external datasets. Training takes place in three phases. The encoder and "general object decoder", as well as the codebook, are pretrained on ImageNet. Defects are then generated at the feature level using the codebook on the quantized representations, and are used to train the object-specific decoder as well as the anomaly detection module. In the final phase of training, the upsampling module is trained on simulated image-level smudges in order to output more robust anomaly maps.

Architecture
************

.. image:: https://raw.githubusercontent.com/openvinotoolkit/anomalib/main/docs/source/images/dsr/architecture.png
:alt: DSR Architecture

Usage
*****

.. code-block:: bash

$ python tools/train.py --model dsr


.. automodule:: anomalib.models.dsr.torch_model
:members:
:undoc-members:
:show-inheritance:

.. automodule:: anomalib.models.dsr.lightning_model
:members:
:undoc-members:
:show-inheritance:

.. automodule:: anomalib.models.dsr.anomaly_generator
:members:
:undoc-members:
:show-inheritance:

.. automodule:: anomalib.models.dsr.loss
:members:
:undoc-members:
:show-inheritance:
1 change: 1 addition & 0 deletions docs/source/reference_guide/algorithms/index.rst
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Expand Up @@ -11,6 +11,7 @@ Algorithms
dfkde
dfm
draem
dsr
fastflow
ganomaly
padim
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2 changes: 2 additions & 0 deletions src/anomalib/models/__init__.py
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Expand Up @@ -21,6 +21,7 @@
from anomalib.models.dfkde import Dfkde
from anomalib.models.dfm import Dfm
from anomalib.models.draem import Draem
from anomalib.models.dsr import Dsr
from anomalib.models.efficient_ad import EfficientAd
from anomalib.models.fastflow import Fastflow
from anomalib.models.ganomaly import Ganomaly
Expand All @@ -37,6 +38,7 @@
"Dfkde",
"Dfm",
"Draem",
"Dsr",
"Fastflow",
"Ganomaly",
"Padim",
Expand Down
209 changes: 209 additions & 0 deletions src/anomalib/models/dsr/LICENSE
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Copyright (c) 2023 Intel Corporation
SPDX-License-Identifier: Apache-2.0

Some files in this folder are based on the original DSR implementation by VitjanZ

Original license:
----------------

Apache License
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21 changes: 21 additions & 0 deletions src/anomalib/models/dsr/README.md
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# DSR – A Dual Subspace Re-Projection Network for Surface Anomaly Detection

This is the implementation of the [DSR](https://link.springer.com/chapter/10.1007/978-3-031-19821-2_31) paper.

Model Type: Segmentation

## Description

DSR is a quantized-feature based algorithm that consists of an autoencoder with one encoder and two decoders, coupled with an anomaly detection module. DSR learns a codebook of quantized representations on ImageNet, which are then used to encode input images. These quantized representations also serve to sample near-in-distribution anomalies, since they do not rely on external datasets. Training takes place in three phases. The encoder and "general object decoder", as well as the codebook, are pretrained on ImageNet. Defects are then generated at the feature level using the codebook on the quantized representations, and are used to train the object-specific decoder as well as the anomaly detection module. In the final phase of training, the upsampling module is trained on simulated image-level smudges in order to output more robust anomaly maps.

## Architecture

![DSR Architecture](https://raw.githubusercontent.com/openvinotoolkit/anomalib/main/docs/source/images/dsr/architecture.png "DSR Architecture")

## Usage

`python tools/train.py --model dsr`

## Benchmark

Benchmarking results are not yet available for this algorithm. Please check again later.
8 changes: 8 additions & 0 deletions src/anomalib/models/dsr/__init__.py
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"""DSR model."""

# Copyright (C) 2023 Intel Corporation
# SPDX-License-Identifier: Apache-2.0

from .lightning_model import Dsr, DsrLightning

__all__ = ["Dsr", "DsrLightning"]
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