VGG脸部描述符在python与caffe

Iwn*_*Iwn 6 python matlab deep-learning caffe vgg-net

我想在python中实现VGG Face Descriptor.但我一直收到一个错误:

TypeError:只能将列表(不是"numpy.ndarray")连接到列表

我的代码:

import numpy as np
import cv2 
import caffe
img = cv2.imread("ak.png")
img = cv2.cvtColor(img, cv2.COLOR_RGB2BGR)
net = caffe.Net("VGG_FACE_deploy.prototxt","VGG_FACE.caffemodel",  caffe.TEST)
print net.forward(img)
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你能帮助我吗 ?

更新1

这个工作代码是matlab中的示例

%  Copyright (c) 2015, Omkar M. Parkhi
%  All rights reserved.
img = imread('ak.png');
img = single(img);

    Img = [129.1863,104.7624,93.5940] ;

img = cat(3,img(:,:,1)-averageImage(1),...
    img(:,:,2)-averageImage(2),...
    img(:,:,3)-averageImage(3));

img = img(:, :, [3, 2, 1]); % convert from RGB to BGR
img = permute(img, [2, 1, 3]); % permute width and height

model = 'VGG_FACE_16_deploy.prototxt';
weights = 'VGG_FACE.caffemodel';
caffe.set_mode_cpu();
net = caffe.Net(model, weights, 'test'); % create net and load weights

res = net.forward({img});
prob = res{1};

caffe_ft = net.blobs('fc7').get_data();
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Sha*_*hai 7

要使用python接口,您需要先将输入图像转换为网络

img = caffe.io.load_image( "ak.png" )
img = img[:,:,::-1]*255.0 # convert RGB->BGR
avg = np.array([93.5940, 104.7624, 129.1863])  # BGR mean values
img = img - avg # subtract mean (numpy takes care of dimensions :)
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现在imgH-by- W-by-3 numpy的阵列.
Caffe期望其输入为4D:batch_index x通道x宽度x高度.
因此,您需要transpose输入并添加单个维度来表示"batch_index"前导维度

img = img.transpose((2,0,1)) 
img = img[None,:] # add singleton dimension
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现在你可以运行前进传球了

out = net.forward_all( data = img )
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