ShuffleNet-3D V1洗牌培训时间 视频数据集

确定视频中的主要动作

该网络系列于2019年发布,由用于视频分类的原始ShuffleNet V1架构的三维(3D)版本组成。ShuffleNet V1架构利用了逐点分组卷积和信道洗牌,这两种新操作在保持准确性的同时大大降低了计算成本。随着Jester和Kinetics-600等大规模视频数据集的可用性,与用于视频分类任务的二维模型相比,这些模型实现了更好的精确度。

型号:8

训练集信息

性能

示例

资源检索

获取预先训练过的网:

在[1]中:=
NetModel[“ShuffleNet-3D V1视频数据集培训”]
输出[1]=

NetModel参数

该模型由一系列单独的网络组成,每个网络由特定的参数组合标识。检查可用参数:

在[2]中:=
NetModel[“ShuffleNet-3D V1视频数据集训练”,“ParametersInformation”]
输出[2]=

通过指定参数选择非默认网络:

在[3]中:=
NetModel[{“ShuffleNet-3D V1 Trained on Video Dataset”,“Width”->1.0,“Dataset”->“Kinetics”}]
输出[3]=

选择一个非默认的未初始化网络:

在[4]中:=
NetModel[{“ShuffleNet-3D V1 Trained on Video Datasets”,“Width”->2.0,“Dataset”->“Jester”},“UninitializedEvaluationNet”]
输出[4]=

基本用法

识别视频中的主要动作:

在[5]中:=
bbq=ResourceData[“示例视频:烧烤”];
在[6]中:=
NetModel[“ShuffleNet-3D V1视频数据集训练”][bbq]
输出[6]=

获得净预测的10个最可能实体的概率:

在[7]中:=
NetModel[“ShuffleNet-3D V1视频数据集训练”][bbq,{“TopProbabilities”,10}]
输出[7]=

获取所有可用类的名称列表:

在[8]中:=
NetExtract[NetModel[“ShuffleNet-3D V1 Trained on Video Dataset”],“Output”][[“Labels”]]
输出[8]=

NetModel体系结构

ShuffleNet-3D V1提供了一个高效而优雅的通道洗牌操作实现:一个带有n个对通道进行整形,以将通道尺寸扩大到两个尺寸(,n个),然后转置并进一步展平,作为下一层的输入:

在[9]中:=
NetExtract(网络提取)[NetModel[“ShuffleNet-3D V1视频数据集训练”],{“block1a”,“channel_shuffle”}]
输出[9]=

在[10]中:=
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LCwsLCwUPC/q+OIZA=="], {{0, 17.}, {618., 0}}, {0, 255},ColorFunction->RGB颜色,图像分辨率->{144.,144.}],BoxForm`ImageTag[“Byte”,ColorSpace->“RGB”,Interleaving->True],可选->假],DefaultBaseStyle->“图像图形”,图像大小->自动,图像大小原始->{618.,17.},绘图范围->{{0,618.},{0,17.}}]\)
输出[10]=

特征提取

删除训练后的网络的最后两层,以便网络生成图像的矢量表示:

在[11]中:=
刷牙=ResourceData[“刷牙视频示例”];
在[12]中:=
啦啦队=ResourceData[“啦啦队视频示例”];
在[13]中:=
提取器=NetTake[NetModel[“ShuffleNet-3D V1在视频数据集上训练”],{1,-4}]
输出[13]=

获取一组视频:

在[14]中:=
videos=加入[刷牙,啦啦队];

可视化一组视频的功能:

在[15]中:=
FeatureSpacePlot[视频,FeatureExtractor->提取器,LabelingFunction->(标注[缩略图@VideoExtractFrames[#1,数量[1,“帧”]]&),标签大小->50,图像大小->600]
输出[15]=

转移学习

使用预训练模型构建分类器,将图像与数据集中不存在的两个动作类区分开来。创建测试集和培训集:

在[16]中:=
视频=<|ResourceData[“Sample Video:Reading a Book”]->“Reading Book”,ResourceData[“Sample Video:Blowing Glitter”]->“Blowing Glitter”|>;
在[17]中:=
数据集=联接@@KeyValueMap[螺纹[视频分割[#1,最多@表[数量[i,“帧”],{i,16,信息[#1,“帧计数”][[1],16}]]->#2]&,视频];
在[18]中:=
{train,test}=ResourceFunction[“TrainTestSplit”][数据集,“TrainingSetSize”->0.7];

从预处理网中去除线性层:

在[19]中:=
tempNet=NetTake[NetModel[“ShuffleNet-3D V1在视频数据集上训练”],{1,-3}]
输出[19]=

创建一个新的网络,该网络由预处理网络、线性层和softmax层组成:

在[20]中:=
newNet=NetJoin[tempNet,NetChain[{“Linear”->LinearLayer[],“Softmax”->SoftmaxLayer[]}],“Output”->NetDecoder[{”Class“,{”blowing flink“,”reading book“}}]]
输出[20]=

对数据集进行训练,冻结除“线性”新层中的权重之外的所有权重(使用目标设备->“GPU”用于在GPU上进行培训):

在[21]中:=
trainedNet=NetTrain[newNet,train,LearningRateMultipler->{“Linear”->1,_->0},ValidationSet->Scaled[0.1]]
输出[21]=

在测试集上获得了完美的精确度:

在[22]中:=
分类器测量[trainedNet,test,“准确性”]
输出[22]=

净信息

检查网络中所有阵列的参数数量:

在[23]中:=
信息[NetModel[“ShuffleNet-3D V1视频数据集训练”],“ArraysElementCounts”]
输出[23]=

获取参数总数:

在[24]中:=
信息[NetModel[“ShuffleNet-3D V1视频数据集培训”],“ArraysTotalElementCount”]
输出[24]=

获取层类型计数:

在[25]中:=
信息[NetModel[“ShuffleNet-3D V1视频数据集训练”],“LayerTypeCounts”]
输出[25]=

显示摘要图形:

在[26]中:=
信息[NetModel[“ShuffleNet-3D V1视频数据集培训”],“SummaryGraphic”]
输出[26]=

导出到ONNX

导出将网络转换为ONNX格式:

在[27]中:=
onnxFile=Export[FileNameJoin[{$TemporaryDirectory,“net.onnx”}],NetModel[“ShuffleNet-3D V1视频数据集训练”]]
输出[27]=

获取ONNX文件的大小:

在[28]中:=
文件字节计数[onnxFile]
输出[28]=

检查ONNX模型的一些元数据:

在[29]中:=
{opsetVersion,irVersion}={Import[onnxFile,“OperatorSetVersion”],Import[onnx文件,“irVersion”]}
输出[29]=

将模型导入回Wolfram语言。然而网络编码器网络解码器将不存在,因为ONNX不支持它们:

在[30]中:=
导入[onnxFile]
输出[30]=

资源历史记录

参考