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Add files using upload-large-folder tool

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.gitattributes CHANGED
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Git LFS Details

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+ ---
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+ language:
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+ - zh
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+ tags:
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+ - hisilicon
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+ - hispark
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+ - npu
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+ - openharmony
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+ - modelzoo
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+ - pytorch
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+ ---
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+
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+ # DenseNet121
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+
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+ DenseNet 针对 ResNet 的冗余结构提出了改进:让网络中的每一层和前面的所有层相连,同时把每一层设计的比较窄,使每一层学到的特征变少从而降低冗余。除了减少参数量之外,该结构还有减轻梯度消失问题、增强特征传播等优点。
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+
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+ ## Mirror Metadata
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+
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+ - Hugging Face repo: shadow-cann/hispark-modelzoo-densenet121
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+ - Portal model id: j3mmucroso00
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+ - Created at: 2026-03-16 20:23:49
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+ - Updated at: 2026-03-26 09:35:38
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+ - Category: 计算机视觉
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+
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+ ## Framework
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+
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+ - PyTorch
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+
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+ ## Supported OS
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+
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+ - OpenHarmony
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+ - Linux
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+
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+ ## Computing Power
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+
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+ - Hi3403V100 SVP_NNN
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+ - Hi3403V100 NNN
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+
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+ ## Tags
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+
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+ - 分类
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+
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+ ## Detail Parameters
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+
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+ - 输入: 224x224
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+ - 参数量: 8.04M
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+ - 计算量: 6.369GFLOPs
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+
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+ ## Files In This Repo
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+
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+ - densenet121_om-A8W8.om (编译模型 / A8W8)
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+ - densenet121.om (编译模型 / FP16; 编译模型 / OM 元数据 / A8W8)
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+ - densenet121.onnx (源模型 / 源模型下载; 源模型 / 源模型元数据)
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+ - densenet121-a639ec97.pth (源模型 / 源模型下载; 源模型 / 源模型元数据)
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+ - SVP_NNN_PC_V1.0.6.0.tgz (附加资源 / 附加资源)
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+
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+ ## Upstream Links
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+
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+ - Portal card: https://gitbubble.github.io/hisilicon-developer-portal-mirror/model-detail.html?id=j3mmucroso00
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+ - Upstream repository: https://gitee.com/HiSpark/modelzoo/tree/master/samples/built-in/classification/DenseNet121
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+ - License reference: https://github.com/pytorch/vision/blob/v0.14.0/LICENSE
62
+
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+ ## Notes
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+
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+ - This repository was mirrored from the HiSilicon Developer Portal model card and local downloads captured on 2026-03-27.
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+ - File ownership follows the portal card mapping, not just filename similarity.
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+ - Cover image: 1700942504460291_des.png
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