Deep Residual Learning for Image Recognition
Paper
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1512.03385
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Published
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12
ResNet is a family of deep convolutional neural networks that introduced residual (skip) connections to enable stable training of very deep architectures with strong representational capacity.
Original paper: Deep Residual Learning for Image Recognition, He et al., 2015
ResNet-50 is a commonly used 50-layer variant that offers a strong balance between accuracy and computational cost and is widely adopted as a baseline and as a backbone feature extractor for tasks such as object detection, segmentation, and re-identification.
Model Configuration:
| Model | Device | Model Link |
|---|---|---|
| Resnet50 | N1-655 | Model_Link |
| Resnet50 | CV72 | Model_Link |
| Resnet50 | CV75 | Model_Link |