首页
学习
活动
专区
圈层
工具
发布
社区首页 >问答首页 >更快- tensorflow中的rcnn配置文件

更快- tensorflow中的rcnn配置文件
EN

Stack Overflow用户
提问于 2018-01-22 21:12:35
回答 1查看 5.8K关注 0票数 3

我在tensorflow中使用Google API for object detection来训练和推断一个自定义数据集。

我想调整配置文件的参数以更好地适合我的示例(例如,区域建议书、ROI bbox的大小等)。为此,我需要知道每个参数的作用。不幸的是,配置文件(找到here )没有注释或解释。有些是不言而喻的,比如"num classes“,但其他的则很棘手。

我找到了带有更多注释的this file,但无法将其‘翻译’成我的格式。

我想知道以下其中之一: 1.解释google的API配置文件的每个参数,或者2.从官方的faster-rcnn到google的API配置的‘翻译’,或者至少3.彻底检查faster-rcnn的参数的技术细节(官方文章没有提供所有细节)

谢谢你的帮助!

配置文件示例:

代码语言:javascript
复制
# Faster R-CNN with Resnet-101 (v1) configuration for MSCOCO Dataset.
# Users should configure the fine_tune_checkpoint field in the train config as
# well as the label_map_path and input_path fields in the train_input_reader and
# eval_input_reader. Search for "PATH_TO_BE_CONFIGURED" to find the fields that
# should be configured.

model {
  faster_rcnn {
    num_classes: 90
    image_resizer {
      keep_aspect_ratio_resizer {
    min_dimension: 600
    max_dimension: 1024
      }
    }
    feature_extractor {
      type: 'faster_rcnn_resnet101'
      first_stage_features_stride: 16
    }
    first_stage_anchor_generator {
      grid_anchor_generator {
    scales: [0.25, 0.5, 1.0, 2.0]
    aspect_ratios: [0.5, 1.0, 2.0]
    height_stride: 16
    width_stride: 16
      }
    }
    first_stage_box_predictor_conv_hyperparams {
      op: CONV
      regularizer {
    l2_regularizer {
      weight: 0.0
    }
      }
      initializer {
    truncated_normal_initializer {
      stddev: 0.01
    }
      }
    }
    first_stage_nms_score_threshold: 0.0
    first_stage_nms_iou_threshold: 0.7
    first_stage_max_proposals: 300
    first_stage_localization_loss_weight: 2.0
    first_stage_objectness_loss_weight: 1.0
    initial_crop_size: 14
    maxpool_kernel_size: 2
    maxpool_stride: 2
    second_stage_box_predictor {
      mask_rcnn_box_predictor {
    use_dropout: false
    dropout_keep_probability: 1.0
    fc_hyperparams {
      op: FC
      regularizer {
        l2_regularizer {
          weight: 0.0
        }
      }
      initializer {
        variance_scaling_initializer {
          factor: 1.0
          uniform: true
          mode: FAN_AVG
        }
      }
    }
      }
    }
    second_stage_post_processing {
      batch_non_max_suppression {
    score_threshold: 0.0
    iou_threshold: 0.6
    max_detections_per_class: 100
    max_total_detections: 300
      }
      score_converter: SOFTMAX
    }
    second_stage_localization_loss_weight: 2.0
    second_stage_classification_loss_weight: 1.0
  }
}

train_config: {
  batch_size: 1
  optimizer {
    momentum_optimizer: {
      learning_rate: {
    manual_step_learning_rate {
      initial_learning_rate: 0.0003
      schedule {
        step: 0
        learning_rate: .0003
      }
      schedule {
        step: 900000
        learning_rate: .00003
      }
      schedule {
        step: 1200000
        learning_rate: .000003
      }
    }
      }
      momentum_optimizer_value: 0.9
    }
    use_moving_average: false
  }
  gradient_clipping_by_norm: 10.0
  fine_tune_checkpoint: "PATH_TO_BE_CONFIGURED/model.ckpt"
  from_detection_checkpoint: true
  # Note: The below line limits the training process to 200K steps, which we
  # empirically found to be sufficient enough to train the pets dataset. This
  # effectively bypasses the learning rate schedule (the learning rate will
  # never decay). Remove the below line to train indefinitely.
  num_steps: 200000
  data_augmentation_options {
    random_horizontal_flip {
    }
  }
}

train_input_reader: {
  tf_record_input_reader {
    input_path: "PATH_TO_BE_CONFIGURED/mscoco_train.record"
  }
  label_map_path: "PATH_TO_BE_CONFIGURED/mscoco_label_map.pbtxt"
}

eval_config: {
  num_examples: 8000
  # Note: The below line limits the evaluation process to 10 evaluations.
  # Remove the below line to evaluate indefinitely.
  max_evals: 10
}

eval_input_reader: {
  tf_record_input_reader {
    input_path: "PATH_TO_BE_CONFIGURED/mscoco_val.record"
  }
  label_map_path: "PATH_TO_BE_CONFIGURED/mscoco_label_map.pbtxt"
  shuffle: false
  num_readers: 1
  num_epochs: 1
}
EN

回答 1

Stack Overflow用户

回答已采纳

发布于 2018-01-23 23:56:47

1. tensorflow github中的文件夹protos涵盖了所有配置选项,并对每个选项进行了一些注释。你应该在faster_rcnn.proto,eval.proto和train.proto上查看最常见的2. This算法的博客文章涵盖了在谷歌的开放图像数据集上下载,准备和训练更快的RCNN的所有步骤。2/3-过程中,有一些关于配置选项的讨论。

票数 2
EN
页面原文内容由Stack Overflow提供。腾讯云小微IT领域专用引擎提供翻译支持
原文链接:

https://stackoverflow.com/questions/48382398

复制
相关文章

相似问题

领券
问题归档专栏文章快讯文章归档关键词归档开发者手册归档开发者手册 Section 归档