• 设为首页
  • 点击收藏
  • 手机版
    手机扫一扫访问
    迪恩网络手机版
  • 关注官方公众号
    微信扫一扫关注
    公众号

MuhammedBuyukkinaci/Object-Classification-and-Localization-with-TensorFlow: This ...

原作者: [db:作者] 来自: 网络 收藏 邀请

开源软件名称(OpenSource Name):

MuhammedBuyukkinaci/Object-Classification-and-Localization-with-TensorFlow

开源软件地址(OpenSource Url):

https://github.com/MuhammedBuyukkinaci/Object-Classification-and-Localization-with-TensorFlow

开源编程语言(OpenSource Language):

Python 100.0%

开源软件介绍(OpenSource Introduction):

Object-Classification-and-Localization-with-TensorFlow

This is a multiclass image classification & localization project for SINGLE object using CNN's and TensorFlow on Python3.

Dependencies

pip3 install requirements.txt

Training (GPU)

Cloning the repository to local machine:

git clone https://github.com/MuhammedBuyukkinaci/Object-Classification-and-Localization-with-TensorFlow

Changing directory to this folder

cd Object-Classification-and-Localization-with-TensorFlow

1 ) Augmenting data:

python3 create_training_data.py

2 ) Training the CNN:

python3 train.py

3 ) Testing on unseen data:

python3 test.py

Training on CPU

I trained on a GTX 1050. 1 epoch lasted 10 seconds approximately.

If you are using CPU, which I do not recommend, change the lines below in train.py:

config = tf.ConfigProto(allow_soft_placement=True)
config.gpu_options.allow_growth = True
config.gpu_options.allocator_type = 'BFC'
with tf.Session(config=config) as sess:

to

with tf.Session() as sess:

Data

3 categories: Cucumber, eggplant and mushroom. 188 images from 3 categories were used in this project. Images used in this project are in training_images folder. You can also download them from here.

Steps

1 ) Collecting images via Google Image Download. Only one object must be in the image. After collecting images, you must resize them to in order to be able to label.

2 ) Labeling images via LabelImg.

3 ) Data Augmentation (create_training_data.py). Mirroring with respect to x axis, mirroring with respect to y axis and adding noise were carried out. Hereby, data amount is 8-fold.

4 ) After data augmentation, create_training_data.py script is creating suitable xml files for augmented images(in order not to label all augmented labels).

5 ) Making our data tabular. Input is image that we feed into CNN. Output1 is one hot encoded classification output. Output2 is the locations of bounding boxes(regression) in create_training_data.py.

6 ) Determining hypermaraters in train.py.

7 ) Separating labelled data as train and CV in train.py.

8 ) Defining our architecture in train.py. I used AlexNet for model architecture.

9 ) Creating 2 heads for calculating loss in train.py. One head is classification loss. The other head is regression loss.

10 ) Training the CNN on a GPU (GTX 1050 - One epoch lasted 10 seconds approximately)

11 ) Testing on unseen data (testing_images folder) collected from the Internet(in test.py).

Architecture

AlexNet is used as architecture. 5 convolution layers and 3 Fully Connected Layers with 0.5 Dropout Ratio. 60 million Parameters. alt text

Predictions




鲜花

握手

雷人

路过

鸡蛋
该文章已有0人参与评论

请发表评论

全部评论

专题导读
上一篇:
Lolisky/Crusader-Kings-II-2.6.3-Chinese-Localization: Crusader Kings II(王国风 ...发布时间:2022-08-16
下一篇:
kolyvan/kybook3-localization发布时间:2022-08-16
热门推荐
阅读排行榜

扫描微信二维码

查看手机版网站

随时了解更新最新资讯

139-2527-9053

在线客服(服务时间 9:00~18:00)

在线QQ客服
地址:深圳市南山区西丽大学城创智工业园
电邮:jeky_zhao#qq.com
移动电话:139-2527-9053

Powered by 互联科技 X3.4© 2001-2213 极客世界.|Sitemap