Readme.txt
August 6, 2021 ยท View on GitHub
Use under BSD Lisence. Run python sentiBank.py, it will explain itself. CPU/GPU are both supported. You can run the example image by: python sentiBank.py test_image.jpg
The output should be a json file, containing 2,089 ranked concept scores, and a 4096-dimension feature (fc7).
Under windows 7+, you can probably run above command directly. Otherwise you may need to compile Caffe. Before compiling, put the extract_nfeatures.cpp under caffe/tools. After compiling, copy/link caffe/build/tools/extract_nfeatures.bin or exe to DeepSentiBank folder. There is also a .m file that can read the raw feature file (fc7.dat prob.dat) generated from the executable extract_nfeatures. into matlab.
Please cite: @article{chen2014deepsentibank, title={Deepsentibank: Visual sentiment concept classification with deep convolutional neural networks}, author={Chen, Tao and Borth, Damian and Darrell, Trevor and Chang, Shih-Fu}, journal={arXiv preprint arXiv:1410.8586}, year={2014} }
ubuntu 17.04 or greater {
sudo apt-get install libboost-dev sudo apt-get install libcaffe-cpu-dev sudo apt-get install libgflags-dev sudo apt install libgoogle-glog-dev
}
nvcc extract_nfeatures.cpp -o extract_nfeatures -lprotobuf -lglog -lpthread -lboost_system -lcaffe
python sentiBank.py test_vso/image_path_list.txt GPU 0
GPU LIB REQ: cuda 10.2 cublas cudnn 7.5 for 10.2
caffe compilation requires latest version of cmake.
caffe installtion link https://caffe.berkeleyvision.org/install_apt.html
Original Source Code and weight files are available at https://www.dropbox.com/sh/kzqkd7c94aarijd/AADzE0r19XpvzBw_K5Bbeq1Da?dl=0&file_subpath=%2FDeepSentiBank&preview=DeepSentiBank_works_with_Caffe_rc2.zip
For multiple Images: Usage: python sentiBank.py image_path/image_path_list.txt [CPU/GPU] [DEVICE_ID=0]