name: GoogleNet on ImageNet SINGA version: 1.0.1 SINGA commit: 8c990f7da2de220e8a012c6a8ecc897dc7532744 parameter_url: https://s3-ap-southeast-1.amazonaws.com/dlfile/bvlc_googlenet.tar.gz parameter_sha1: 0a88e8948b1abca3badfd8d090d6be03f8d7655d license: unrestricted https://github.com/BVLC/caffe/tree/master/models/bvlc_googlenet --- # 用GoogleNet做图像分类 这个例子中,我们将caffe训练好的GoogleNet转换为SINGA模型以用作图像分类。 ## 操作说明 * 下载参数的checkpoint文件到如下目录 $ wget https://s3-ap-southeast-1.amazonaws.com/dlfile/bvlc_googlenet.tar.gz $ tar xvf bvlc_googlenet.tar.gz * 运行程序 # use cpu $ python serve.py -C & # use gpu $ python serve.py & * 提交图片进行分类 $ curl -i -F image=@image1.jpg http://localhost:9999/api $ curl -i -F image=@image2.jpg http://localhost:9999/api $ curl -i -F image=@image3.jpg http://localhost:9999/api image1.jpg, image2.jpg和image3.jpg应该在执行指令前就已被下载。 ## 详细信息 我们首先从[Caffe的checkpoint文件](http://dl.caffe.berkeleyvision.org/bvlc_googlenet.caffemodel)中提取参数值,并转换为pickle版本。下载checkpoint文件后进入`caffe_root/python`文件夹,运行如下脚本: # to be executed within caffe_root/python folder import caffe import numpy as np import cPickle as pickle model_def = '../models/bvlc_googlenet/deploy.prototxt' weight = 'bvlc_googlenet.caffemodel' # must be downloaded at first net = caffe.Net(model_def, weight, caffe.TEST) params = {} for layer_name in net.params.keys(): weights=np.copy(net.params[layer_name][0].data) bias=np.copy(net.params[layer_name][1].data) params[layer_name+'_weight']=weights params[layer_name+'_bias']=bias print layer_name, weights.shape, bias.shape with open('bvlc_googlenet.pickle', 'wb') as fd: pickle.dump(params, fd) 然后我们使用SINGA的FeedForwardNet结构构建GoogleNet。 请注意,我们添加了一个EndPadding层来解决Caffe(下取整)和cuDNN(上取整)之间池化图层舍入策略差异的问题。 只有MaxPooling图层以外的启动块才有此问题。 参考[这里](http://joelouismarino.github.io/blog_posts/blog_googlenet_keras.html)更多详情。