HyperAI초신경

Anomaly Detection On Mvtec Ad

평가 지표

Detection AUROC

평가 결과

이 벤치마크에서 각 모델의 성능 결과

비교 표
모델 이름Detection AUROC
self-supervised-predictive-convolutional96.1
efficientad-accurate-visual-anomaly-detection99.1
towards-total-recall-in-industrial-anomaly99.6
target-before-shooting-accurate-anomaly99.4
fastflow-unsupervised-anomaly-detection-and99.4
target-before-shooting-accurate-anomaly-
winclip-zero-few-shot-anomaly-classification93.1
dsr-a-dual-subspace-re-projection-network-for98.2
attention-guided-anomaly-detection-and-
deep-feature-selection-for-anomaly-detection96.6
reconpatch-contrastive-patch-representation-
efficientad-accurate-visual-anomaly-detection98.7
focus-your-distribution-coarse-to-fine-non97.7
uninformed-students-student-teacher-anomaly-
probabilistic-distance-based-outlier98.2
unsupervised-two-stage-anomaly-detection90
a-unified-anomaly-synthesis-strategy-with99.9
memseg-a-semi-supervised-method-for-image99.56
cutpaste-self-supervised-learning-for-anomaly-
template-guided-hierarchical-feature99.2
attention-guided-anomaly-detection-and-
iterative-energy-based-projection-on-a-normal-1-
self-supervised-context-learning-for-visual95.81
sam-lad-segment-anything-model-meets-zero98.4
target-before-shooting-accurate-anomaly-
uninformed-students-student-teacher-anomaly-
destseg-segmentation-guided-denoising-student98.6
explainable-deep-one-class-classification-
anomaly-detection-with-conditioned-denoising99.8
padim-a-patch-distribution-modeling-framework-
reconpatch-contrastive-patch-representation99.72
unsupervised-anomaly-detection-and93.4
registration-based-few-shot-anomaly-detection88.2
student-teacher-feature-pyramid-matching-for95.5
mocca-multi-layer-one-class-classification87.5
winclip-zero-few-shot-anomaly-classification95.2
diversity-measurable-anomaly-detection99.5
winclip-zero-few-shot-anomaly-classification94.4
padim-a-patch-distribution-modeling-framework97.9
registration-based-few-shot-anomaly-detection92.7
anomaly-localization-by-modeling-perceptual-
collaborative-discrepancy-optimization-for-1-
anomaly-detection-via-reverse-distillation98.5
image-anomaly-detection-and-localization-with99.56
draem-a-discriminatively-trained98.0
simplenet-a-simple-network-for-image-anomaly99.6
reconstructed-student-teacher-and98.7
unsupervised-anomaly-detection-and92.6
modeling-the-distribution-of-normal-data-in95.8
fair-frequency-aware-image-restoration-for98.6
same-same-but-differnet-semi-supervised94.9
towards-efficient-pixel-labeling-for99.7
efficient-anomaly-detection-with-budget99.6
adaclip-adapting-clip-with-hybrid-learnable89.2
sub-image-anomaly-detection-with-deep-pyramid85.5
unsupervised-image-anomaly-detection-and97.5
target-before-shooting-accurate-anomaly99.7
anomalydino-boosting-patch-based-few-shot96.6
anomaly-detection-of-defect-using-energy-of95.1
uninformed-students-student-teacher-anomaly-
padim-a-patch-distribution-modeling-framework95.3
transfusion-a-transparency-based-diffusion99.4
reconpatch-contrastive-patch-representation99.62
progressive-boundary-guided-anomaly-synthesis99.8
reconstruction-from-edge-image-combined-with97.8
informative-knowledge-distillation-for-image-
anomalyclip-object-agnostic-prompt-learning91.5
모델 6899.5
asymmetric-student-teacher-networks-for99.2
target-before-shooting-accurate-anomaly-
glad-towards-better-reconstruction-with99.3
musc-zero-shot-industrial-anomaly97.8
anomaly-detection-using-normalizing-flow98.85
exploring-intrinsic-normal-prototypes-within99.8
incremental-self-supervised-learning-based-on97.6
multi-scale-patch-based-representation98.1
unsupervised-anomaly-detection-and93.4
semi-orthogonal-embedding-for-efficient-
zero-shot-anomaly-detection-via-batch-185.8
cflow-ad-real-time-unsupervised-anomaly98.26
altub-alternating-training-method-to-update-
reconstruction-by-inpainting-for-visual91.7
industrial-anomaly-detection-with-domain98.4
msflow-multi-scale-flow-based-framework-for99.7
anoseg-anomaly-segmentation-network-using96
position-encoding-enhanced-feature-mapping-
vcp-clip-a-visual-context-prompting-model-for-
inpainting-transformer-for-anomaly-detection95.0
towards-total-recall-in-industrial-anomaly99.2
exploring-dual-model-knowledge-distillation96.2
grid-based-continuous-normal-representation99.4
registration-based-few-shot-anomaly-detection91.2
anomalydino-boosting-patch-based-few-shot97.7
reconpatch-contrastive-patch-representation99.71
anomaly-detection-via-self-organizing-map97.9
anomaly-detection-of-defect-using-energy-of85.61
anomalydino-boosting-patch-based-few-shot99.5
learning-and-evaluating-representations-for-186.3
two-stage-coarse-to-fine-image-anomaly98.0
fully-convolutional-cross-scale-flows-for98.7
attention-guided-anomaly-detection-and-
cutpaste-self-supervised-learning-for-anomaly95.2
altub-alternating-training-method-to-update99.4
can-i-trust-my-anomaly-detection-system-a90
generating-and-reweighting-dense-contrastive98.7
self-supervised-predictive-convolutional98.9
image-anomaly-detection-and-localization-with99.63
excision-and-recovery-enhancing-surface94.2
a-zero-few-shot-anomaly-classification-and86.1
reconpatch-contrastive-patch-representation99.56
self-supervised-out-of-distribution-detection-197.2
cutpaste-self-supervised-learning-for-anomaly96.1
omni-frequency-channel-selection98.3
revisiting-reverse-distillation-for-anomaly99.44
self-supervised-masked-convolutional98.7
towards-total-recall-in-industrial-anomaly95.4
n-pad-neighboring-pixel-based-industrial99.37
explainable-deep-one-class-classification-
unlocking-the-potential-of-reverse99.2
2408-0314398.4
self-supervised-masked-convolutional97.7
winclip-zero-few-shot-anomaly-classification91.8
multi-scale-feature-reconstruction-network98.4
efficientad-accurate-visual-anomaly-detection99.8
dfr-deep-feature-reconstruction-for93.8
pyramidflow-high-resolution-defect-
industrial-image-anomaly-localization-based93.1
patch-svdd-patch-level-svdd-for-anomaly92.1
realnet-a-feature-selection-network-with99.6
target-before-shooting-accurate-anomaly99.7
mean-shifted-contrastive-loss-for-anomaly87.2
cfa-coupled-hypersphere-based-feature99.3
learning-and-evaluating-representations-for-186.5
dinomaly-the-less-is-more-philosophy-in-multi99.60
anomalydino-boosting-patch-based-few-shot96.9
fapm-fast-adaptive-patch-memory-for-real-time99
모델 13799.5
produce-once-utilize-twice-for-anomaly99.5
anomaly-detection-of-defect-using-energy-of89.02
pedenet-image-anomaly-localization-via-patch92.8
remembering-normality-memory-guided-knowledge99.6
pyramidflow-high-resolution-defect-
dinomaly-the-less-is-more-philosophy-in-multi99.77
attention-guided-anomaly-detection-and-