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forresti
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SqueezeNet
SqueezeNet: AlexNet-level accuracy with 50x fewer parameters
BSD 2-Clause "Simplified" License
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Some minor mistakes in the paper
#65
Alphacch
opened
1 year ago
3
squeezenet for speech
#64
akankshaaa13
opened
2 years ago
3
squeezenet v1_1 for facedetector , possible , feasable ?
#63
blackholeearth
opened
3 years ago
1
Image normalization values
#62
AlexMuresan
closed
4 years ago
1
optimization and compression
#61
yangninghua
closed
5 years ago
0
why not use lr_mult, decay_mult like {1, 1, 2, 0}?
#60
ujsyehao
opened
6 years ago
3
which label list you used
#59
azuryl
closed
5 years ago
1
Fine-tuning SqueezeNet
#58
mun3
closed
6 years ago
2
Added link to a Matlab-compatible model
#57
titsitits
opened
6 years ago
0
The SqueezeNet deploy.caffemodel files have all 0.0 weight and bias data
#56
jnorwood
closed
6 years ago
1
Update README with community implementation link
#55
vonclites
closed
6 years ago
1
SqueezeNet training on cifar
#54
GitZinc
closed
6 years ago
3
why can not get the output of the prob layer?
#53
fengpingsh
closed
6 years ago
1
training from scratch, random seed
#52
woshilaixuexide
closed
6 years ago
1
SqueezeNet is slower when using GPU than when using CPU?
#51
shunsuke227ono
closed
6 years ago
2
1.1 deploy.prototxt
#50
ChenZhaobin
closed
7 years ago
1
tensorflow- After hundreds of epochs, my total_loss stay around 0.6~0.7, and not decreased
#49
turboLIU
closed
7 years ago
2
Image Width Issue
#48
azamsharp
closed
6 years ago
1
Top-1 Acc=61.0% on ImageNet, without any sacrificing compared with SqueezeNet v1.1.
#47
miaow1988
opened
7 years ago
4
SqueezeNet v1.1 with Residual Connections with Dense→Sparse→Dense (DSD) Training
#46
ShervinAr
opened
7 years ago
0
Added link to CoreML implementation
#45
mdering
closed
7 years ago
0
model convert
#44
wm901115nwpu
closed
6 years ago
1
Add 1.1 deploy.prototxt
#43
cyberfire
closed
6 years ago
1
Has anyone successfully trained Squeezenet with residual connections?
#42
stoneyang
closed
6 years ago
0
SqueezeNet with Deep Compression
#41
tangtangsiqi
closed
6 years ago
1
Number of anchors reducing mAP
#40
soyebn
closed
6 years ago
2
Would you alos share your caffe training/val log file as well?
#39
Coderx7
closed
6 years ago
1
How to use this SqueezeNet question?
#38
LXWDL
closed
6 years ago
1
Train SqueezeNet from scratch ?
#37
phongnhhn92
closed
7 years ago
3
Pre-trained model that DSD technique is applied?
#36
wonjeon
closed
7 years ago
2
Small changes for faster convergence
#35
NikolasMarkou
closed
2 years ago
5
SqueezeNet in PyTorch
#34
Maratyszcza
closed
7 years ago
4
v1.1 dimensions mismatch in the first layers
#33
gudovskiy
closed
7 years ago
1
conv10 layer has pad 1
#32
psyhtest
closed
7 years ago
3
In V1.1 train_val.prototxt, why are the TRAIN & TEST phase (in loss and accuracy layers) commented out?
#31
aurotripathy
closed
7 years ago
1
Replace global pooling with explicitly defined window
#30
psyhtest
closed
7 years ago
5
SqueezeNet speed slower than Alexnet
#29
PearlDzzz
closed
7 years ago
4
why cost 2500+ MB when training but the model only 5MB big?
#28
aceimnorstuvwxz
closed
7 years ago
2
Padding in conv-10 layer
#27
AlexandreBriot
closed
7 years ago
1
Any one run SqueezeNet by opencv dnn module??
#26
chibai
closed
7 years ago
4
binarized SqueezeNet
#25
AGhiuta
closed
6 years ago
0
crop_size is 227 instead of 224?
#24
shesung
closed
7 years ago
1
Image Preprocessing for stated top5 accuracy
#23
fervorarc
closed
7 years ago
2
build my own sqeezenet
#22
zhaishengfu
closed
7 years ago
2
Create deploy.prototxt
#21
ae86208
closed
6 years ago
3
add deploy file
#20
rmekdma
closed
6 years ago
0
SqueezeNet out of memory with batch size (512) smaller than AlexNet (1024)
#19
wenwei202
closed
7 years ago
11
v1.1 loss does not decrease
#18
kli-casia
closed
7 years ago
17
squeezenet of resnet?
#17
davidleon
closed
8 years ago
1
regarding performance improvement for AlexNet
#16
williamjames1
closed
8 years ago
20
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