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SusTech GmbH resnet50 backbone
The first row is the original raw image. The second row is the class activation mapping plus plus (CAM++) of the <t>ResNet50.</t> The third row is the fined-grained lesion detection visualization from the proposed FKD-CSS model. FKD fine-grained knowledge distillation. CSS corneal staining score.
Resnet50 Backbone, supplied by SusTech GmbH, used in various techniques. Bioz Stars score: 90/100, based on 1 PubMed citations. ZERO BIAS - scores, article reviews, protocol conditions and more
https://www.bioz.com/product/resnet50+backbone/pmc12102350-288-10-6?v=SusTech+GmbH
Average 90 stars, based on 1 article reviews
resnet50 backbone - by Bioz Stars, 2026-07
90/100 stars

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1) Product Images from "Advanced and interpretable corneal staining assessment through fine grained knowledge distillation"

Article Title: Advanced and interpretable corneal staining assessment through fine grained knowledge distillation

Journal: NPJ Digital Medicine

doi: 10.1038/s41746-025-01706-y

The first row is the original raw image. The second row is the class activation mapping plus plus (CAM++) of the ResNet50. The third row is the fined-grained lesion detection visualization from the proposed FKD-CSS model. FKD fine-grained knowledge distillation. CSS corneal staining score.
Figure Legend Snippet: The first row is the original raw image. The second row is the class activation mapping plus plus (CAM++) of the ResNet50. The third row is the fined-grained lesion detection visualization from the proposed FKD-CSS model. FKD fine-grained knowledge distillation. CSS corneal staining score.

Techniques Used: Activation Assay, Distillation, Staining



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The first row is the original raw image. The second row is the class activation mapping plus plus (CAM++) of the <t>ResNet50.</t> The third row is the fined-grained lesion detection visualization from the proposed FKD-CSS model. FKD fine-grained knowledge distillation. CSS corneal staining score.
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Illustration of the two-stage deep learning detection system of the HER2 gene amplification stage in FISH images from breast cancer samples. ( A ) The nucleus detector network takes whole FISH images as input and outputs the localization and classification for all detected nuclei. ( B ) The signal detector network subsequently takes each detected nucleus and localizes and classifies individual FISH signals. The output of both networks is post-processed by calculation of the low/high grade ratios and HER2/CEN17 ratios, and an image-wide classification prediction is computed and reported. ( C ) Both detectors are based on RetinaNet which consists of a <t>ResNet50</t> feature extraction network, a feature pyramid network and two fully convolutional classification and box regression networks for every level of the feature pyramid.
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Image Search Results


The first row is the original raw image. The second row is the class activation mapping plus plus (CAM++) of the ResNet50. The third row is the fined-grained lesion detection visualization from the proposed FKD-CSS model. FKD fine-grained knowledge distillation. CSS corneal staining score.

Journal: NPJ Digital Medicine

Article Title: Advanced and interpretable corneal staining assessment through fine grained knowledge distillation

doi: 10.1038/s41746-025-01706-y

Figure Lengend Snippet: The first row is the original raw image. The second row is the class activation mapping plus plus (CAM++) of the ResNet50. The third row is the fined-grained lesion detection visualization from the proposed FKD-CSS model. FKD fine-grained knowledge distillation. CSS corneal staining score.

Article Snippet: We trained a U-Net on the SUSTech-SYSU dataset utilizing a pre-trained ResNet50 backbone on ImageNet for automatic corneal segmentation.

Techniques: Activation Assay, Distillation, Staining

Action triplet recognition full dataset results (mAP)

Journal: International Journal of Computer Assisted Radiology and Surgery

Article Title: EndoViT: pretraining vision transformers on a large collection of endoscopic images

doi: 10.1007/s11548-024-03091-5

Figure Lengend Snippet: Action triplet recognition full dataset results (mAP)

Article Snippet: For reference purposes, we note that the reported performance of ResNet50 backbone in TeCNO [ ] is 88.56% ± 0.27%.

Techniques:

Action triplet recognition few-shot results (mAP)

Journal: International Journal of Computer Assisted Radiology and Surgery

Article Title: EndoViT: pretraining vision transformers on a large collection of endoscopic images

doi: 10.1007/s11548-024-03091-5

Figure Lengend Snippet: Action triplet recognition few-shot results (mAP)

Article Snippet: For reference purposes, we note that the reported performance of ResNet50 backbone in TeCNO [ ] is 88.56% ± 0.27%.

Techniques:

Surgical phase recognition few-shot results (mean accuracy)

Journal: International Journal of Computer Assisted Radiology and Surgery

Article Title: EndoViT: pretraining vision transformers on a large collection of endoscopic images

doi: 10.1007/s11548-024-03091-5

Figure Lengend Snippet: Surgical phase recognition few-shot results (mean accuracy)

Article Snippet: For reference purposes, we note that the reported performance of ResNet50 backbone in TeCNO [ ] is 88.56% ± 0.27%.

Techniques:

Surgical phase recognition full dataset results (mean Accuracy)

Journal: International Journal of Computer Assisted Radiology and Surgery

Article Title: EndoViT: pretraining vision transformers on a large collection of endoscopic images

doi: 10.1007/s11548-024-03091-5

Figure Lengend Snippet: Surgical phase recognition full dataset results (mean Accuracy)

Article Snippet: For reference purposes, we note that the reported performance of ResNet50 backbone in TeCNO [ ] is 88.56% ± 0.27%.

Techniques:

Illustration of the two-stage deep learning detection system of the HER2 gene amplification stage in FISH images from breast cancer samples. ( A ) The nucleus detector network takes whole FISH images as input and outputs the localization and classification for all detected nuclei. ( B ) The signal detector network subsequently takes each detected nucleus and localizes and classifies individual FISH signals. The output of both networks is post-processed by calculation of the low/high grade ratios and HER2/CEN17 ratios, and an image-wide classification prediction is computed and reported. ( C ) Both detectors are based on RetinaNet which consists of a ResNet50 feature extraction network, a feature pyramid network and two fully convolutional classification and box regression networks for every level of the feature pyramid.

Journal: Scientific Reports

Article Title: Automated detection of the HER2 gene amplification status in Fluorescence in situ hybridization images for the diagnostics of cancer tissues

doi: 10.1038/s41598-019-44643-z

Figure Lengend Snippet: Illustration of the two-stage deep learning detection system of the HER2 gene amplification stage in FISH images from breast cancer samples. ( A ) The nucleus detector network takes whole FISH images as input and outputs the localization and classification for all detected nuclei. ( B ) The signal detector network subsequently takes each detected nucleus and localizes and classifies individual FISH signals. The output of both networks is post-processed by calculation of the low/high grade ratios and HER2/CEN17 ratios, and an image-wide classification prediction is computed and reported. ( C ) Both detectors are based on RetinaNet which consists of a ResNet50 feature extraction network, a feature pyramid network and two fully convolutional classification and box regression networks for every level of the feature pyramid.

Article Snippet: In this work, we used the implementation of RetinaNet provided by Fizyr with a ResNet50 backbone provided by the Broad Institute.

Techniques: Amplification, Extraction