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| #include <fstream> |
| #include <string> |
|
|
| #include "boost/scoped_ptr.hpp" |
| #include "glog/logging.h" |
| #include "google/protobuf/text_format.h" |
| #include "stdint.h" |
|
|
| #include "caffe/proto/caffe.pb.h" |
| #include "caffe/util/db.hpp" |
| #include "caffe/util/format.hpp" |
|
|
| using caffe::Datum; |
| using boost::scoped_ptr; |
| using std::string; |
| namespace db = caffe::db; |
|
|
| const int kCIFARSize = 32; |
| const int kCIFARImageNBytes = 3072; |
| const int kCIFARBatchSize = 10000; |
| const int kCIFARTrainBatches = 5; |
|
|
| void read_image(std::ifstream* file, int* label, char* buffer) { |
| char label_char; |
| file->read(&label_char, 1); |
| *label = label_char; |
| file->read(buffer, kCIFARImageNBytes); |
| return; |
| } |
|
|
| void convert_dataset(const string& input_folder, const string& output_folder, |
| const string& db_type) { |
| scoped_ptr<db::DB> train_db(db::GetDB(db_type)); |
| train_db->Open(output_folder + "/cifar10_train_" + db_type, db::NEW); |
| scoped_ptr<db::Transaction> txn(train_db->NewTransaction()); |
| |
| int label; |
| char str_buffer[kCIFARImageNBytes]; |
| Datum datum; |
| datum.set_channels(3); |
| datum.set_height(kCIFARSize); |
| datum.set_width(kCIFARSize); |
|
|
| LOG(INFO) << "Writing Training data"; |
| for (int fileid = 0; fileid < kCIFARTrainBatches; ++fileid) { |
| |
| LOG(INFO) << "Training Batch " << fileid + 1; |
| string batchFileName = input_folder + "/data_batch_" |
| + caffe::format_int(fileid+1) + ".bin"; |
| std::ifstream data_file(batchFileName.c_str(), |
| std::ios::in | std::ios::binary); |
| CHECK(data_file) << "Unable to open train file #" << fileid + 1; |
| for (int itemid = 0; itemid < kCIFARBatchSize; ++itemid) { |
| read_image(&data_file, &label, str_buffer); |
| datum.set_label(label); |
| datum.set_data(str_buffer, kCIFARImageNBytes); |
| string out; |
| CHECK(datum.SerializeToString(&out)); |
| txn->Put(caffe::format_int(fileid * kCIFARBatchSize + itemid, 5), out); |
| } |
| } |
| txn->Commit(); |
| train_db->Close(); |
|
|
| LOG(INFO) << "Writing Testing data"; |
| scoped_ptr<db::DB> test_db(db::GetDB(db_type)); |
| test_db->Open(output_folder + "/cifar10_test_" + db_type, db::NEW); |
| txn.reset(test_db->NewTransaction()); |
| |
| std::ifstream data_file((input_folder + "/test_batch.bin").c_str(), |
| std::ios::in | std::ios::binary); |
| CHECK(data_file) << "Unable to open test file."; |
| for (int itemid = 0; itemid < kCIFARBatchSize; ++itemid) { |
| read_image(&data_file, &label, str_buffer); |
| datum.set_label(label); |
| datum.set_data(str_buffer, kCIFARImageNBytes); |
| string out; |
| CHECK(datum.SerializeToString(&out)); |
| txn->Put(caffe::format_int(itemid, 5), out); |
| } |
| txn->Commit(); |
| test_db->Close(); |
| } |
|
|
| int main(int argc, char** argv) { |
| FLAGS_alsologtostderr = 1; |
|
|
| if (argc != 4) { |
| printf("This script converts the CIFAR dataset to the leveldb format used\n" |
| "by caffe to perform classification.\n" |
| "Usage:\n" |
| " convert_cifar_data input_folder output_folder db_type\n" |
| "Where the input folder should contain the binary batch files.\n" |
| "The CIFAR dataset could be downloaded at\n" |
| " http://www.cs.toronto.edu/~kriz/cifar.html\n" |
| "You should gunzip them after downloading.\n"); |
| } else { |
| google::InitGoogleLogging(argv[0]); |
| convert_dataset(string(argv[1]), string(argv[2]), string(argv[3])); |
| } |
| return 0; |
| } |
|
|