【问题标题】:How to do transfer learning for yolo object detection algorithm?yolo物体检测算法如何进行迁移学习?
【发布时间】:2018-09-23 17:14:21
【问题描述】:

我已经成功训练 yolo 使用 this article 预测我自己的图像。在那里,我在我的 cfg 文件的第 224 行更改了 classes = 5(我训练了 5 个课程)和过滤器为 50。
我想要的是通过训练最后一个全连接层和 softmax 层来为 yolo 做迁移学习。
我的cfg文件如下。

[net]
batch=64
subdivisions=8
height=416
width=416
channels=3
momentum=0.9
decay=0.0005
angle=0
saturation = 1.5
exposure = 1.5
hue=.1

learning_rate=0.0001
max_batches = 45000
policy=steps
steps=100,25000,35000
scales=10,.1,.1

[convolutional]
batch_normalize=1
filters=32
size=3
stride=1
pad=1
activation=leaky

[maxpool]
size=2
stride=2

[convolutional]
batch_normalize=1
filters=64
size=3
stride=1
pad=1
activation=leaky

[maxpool]
size=2
stride=2

[convolutional]
batch_normalize=1
filters=128
size=3
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=64
size=1
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=128
size=3
stride=1
pad=1
activation=leaky

[maxpool]
size=2
stride=2

[convolutional]
batch_normalize=1
filters=256
size=3
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=128
size=1
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=256
size=3
stride=1
pad=1
activation=leaky

[maxpool]
size=2
stride=2

[convolutional]
batch_normalize=1
filters=512
size=3
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=256
size=1
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=512
size=3
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=256
size=1
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=512
size=3
stride=1
pad=1
activation=leaky

[maxpool]
size=2
stride=2

[convolutional]
batch_normalize=1
filters=1024
size=3
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=512
size=1
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=1024
size=3
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=512
size=1
stride=1
pad=1
activation=leaky

[convolutional]
batch_normalize=1
filters=1024
size=3
stride=1
pad=1
activation=leaky


#######

[convolutional]
batch_normalize=1
size=3
stride=1
pad=1
filters=1024
activation=leaky

[convolutional]
batch_normalize=1
size=3
stride=1
pad=1
filters=1024
activation=leaky

[route]
layers=-9

[reorg]
stride=2

[route]
layers=-1,-3

[convolutional]
batch_normalize=1
size=3
stride=1
pad=1
filters=1024
activation=leaky

[convolutional]
size=1
stride=1
pad=1
filters=50
activation=linear

[region]
anchors = 1.08,1.19,  3.42,4.41,  6.63,11.38,  9.42,5.11,  16.62,10.52
bias_match=1
classes=5
coords=4
num=5
softmax=1
jitter=.2
rescore=1

object_scale=5
noobject_scale=1
class_scale=1
coord_scale=1

absolute=1
thresh = .6
random=0

【问题讨论】:

    标签: neural-network training-data yolo


    【解决方案1】:

    其实是filters=(classes + 5)*5

    参考:Here

    【讨论】:

      【解决方案2】:

      对于 5 个类,您需要将过滤器设置为 30 而不是 50。 过滤器=(类数+1)* 5

      【讨论】:

        【解决方案3】:

        我猜你正在使用 pjreddie/darknet 框架来实现 YOLO。 如果是这种情况,则在不需要更新的层上设置一个附加参数stopbackward=1。 在parse.c 文件中,第 724 行:

        l.stopbackward = option_find_int_quiet(options, "stopbackward", 0); 
        

        所以这意味着它在每一层都有一个参数,就像batch_normalize=1 你可以指定stopbackward=1。因此,任何高于此的图层都不会更新。这也可以在第 272 行的文件 network.c 中看到:

        if(l.stopbackward) break; 
        

        【讨论】:

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