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About
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Priyanka Kulkarni
10/1/18
Caffe resizing
Hi, I was wondering if there are details on how Caffe resizes input images through ImageData Layer. I
unread,
caffe
image_data
input
padding
resizing
Caffe resizing
Hi, I was wondering if there are details on how Caffe resizes input images through ImageData Layer. I
10/1/18
Matthew Brown
,
Przemek D
3
3/23/18
Can I turn off some of the Intel Caffe Resnet_50 logging?
Thank you! I will give that a try and see if that fixes my issue! Matt On Friday, March 23, 2018 at 8
unread,
ImageNet
ResNet
caffe
data
finetune
image_data
log
prototxt
save
testing
Can I turn off some of the Intel Caffe Resnet_50 logging?
Thank you! I will give that a try and see if that fixes my issue! Matt On Friday, March 23, 2018 at 8
3/23/18
p.Paul
,
Przemek D
7
2/13/17
Basic problem: blob size exceeds INT_MAX, when using ImageData layer
Thank you very much. :) On Monday, February 13, 2017 at 10:00:36 AM UTC+1, Przemek D wrote:
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blob
image_data
inner_product
num_output
pixelwise
Basic problem: blob size exceeds INT_MAX, when using ImageData layer
Thank you very much. :) On Monday, February 13, 2017 at 10:00:36 AM UTC+1, Przemek D wrote:
2/13/17
kishen suraj P
12/30/16
Compare the speeds of lmdb and Imagedata layer?
I know that lmdb is faster than hdf5. But how does it compare to Imagedata layer? I feel that
unread,
caffe
faster
hdf5
image_data
lmdb
Compare the speeds of lmdb and Imagedata layer?
I know that lmdb is faster than hdf5. But how does it compare to Imagedata layer? I feel that
12/30/16
vijay krishna
12/28/16
using caffe how to get age and gender classification using java (windows platform)
Hi, using ecllipse am running the below tcaffe code with below arguments java tcaffe -solver
unread,
caffe
data-augmentation
feature-extraction
image_data
using caffe how to get age and gender classification using java (windows platform)
Hi, using ecllipse am running the below tcaffe code with below arguments java tcaffe -solver
12/28/16
Sreejith Balakrishnan
10/31/16
Urgently need help with Imagedata and transformations
Hi Everyone, I am in the last week of a project I am doing with Caffe and I am getting terrible
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bgr
convolution
image_data
rgb
Urgently need help with Imagedata and transformations
Hi Everyone, I am in the last week of a project I am doing with Caffe and I am getting terrible
10/31/16
Suyog Trivedi
,
Ketil Malde
5
10/14/16
Caffe significance of Validation (test) loss and Train (loss)
Thanks for your help. I ran the training for 15k iterations. I am getting the output curve as below.
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CIFAR
accuracy
batch_size
caffe
convolutionm
dataset
image_data
learning_rate
lmdb
loss
model
pycaffe
snapshot
testing
Caffe significance of Validation (test) loss and Train (loss)
Thanks for your help. I ran the training for 15k iterations. I am getting the output curve as below.
10/14/16
Hermann Hesse
2
9/28/16
How does Caffe handle different input shapes in classification problems by default?
As summary: when an image (>224x224x3) comes in a trained neural network (224x224x3), it
unread,
caffe
fully-connected
fullyConvolutional
image_data
prototxt
pycaffe
shape
How does Caffe handle different input shapes in classification problems by default?
As summary: when an image (>224x224x3) comes in a trained neural network (224x224x3), it
9/28/16
varunje...@gmail.com
9/22/16
Introducing Datamunchers - service for annotating training sets
Deep learning and other state of the art machine learning approaches need massive well-annotated
unread,
annotation
image
image_data
train
training
video
Introducing Datamunchers - service for annotating training sets
Deep learning and other state of the art machine learning approaches need massive well-annotated
9/22/16
Rafael Padilha
,
Evan Shelhamer
2
9/27/16
Loading batch and labels directly from python in finetuning
I didn't got to this point yet, but after I'm able to instantiate the network, I was going to
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batch
data
fine-tuning
image_data
inputs
label
layer
loading
parameter
prototxt
pycaffe
python
training
Loading batch and labels directly from python in finetuning
I didn't got to this point yet, but after I'm able to instantiate the network, I was going to
9/27/16
Tamar Elazari
,
4559...@qq.com
4
11/5/16
error with test labels
I met the same problem... Have your problem solved? 在 2016年7月26日星期二 UTC+8下午8:21:31,Tamar Elazari写道:
unread,
caffe
error
image_data
label
test
error with test labels
I met the same problem... Have your problem solved? 在 2016年7月26日星期二 UTC+8下午8:21:31,Tamar Elazari写道:
11/5/16
unitready
,
mprl
3
7/27/16
wrong results using trained caffe net from c++
Yes, I scale images with cv::Mat image_float; image.convertTo(image_float, CV_32FC3); понедельник, 25
unread,
Cplusplus
caffe
cpp_classification
deep-learning
image
image_data
input_output
result
wrong results using trained caffe net from c++
Yes, I scale images with cv::Mat image_float; image.convertTo(image_float, CV_32FC3); понедельник, 25
7/27/16
Tamar Elazari
2
7/19/16
ImageData implementation
also - I have a problem passing the labels using the ImageData layer... בתאריך יום שלישי, 19 ביולי
unread,
caffe-recurrent
image_data
implementation
lmdb
ImageData implementation
also - I have a problem passing the labels using the ImageData layer... בתאריך יום שלישי, 19 ביולי
7/19/16
JD-WGB
6/30/16
Access to filename of last processed Image file
Hi, I'm debugging a network using an ImageData layer as input and was wondering how I would go
unread,
image_data
input
pycaffe
testing
Access to filename of last processed Image file
Hi, I'm debugging a network using an ImageData layer as input and was wondering how I would go
6/30/16
Jalen Hawkins
,
Daniel Moodie
4
6/24/16
accuracy=0?
okay so i found a few slight mechanical errors such as the name of some of the pictures not matching
unread,
ImageNet
accuracy
batch_size
caffe
image_data
learning_rate
loss
network
snapshot
training
accuracy=0?
okay so i found a few slight mechanical errors such as the name of some of the pictures not matching
6/24/16
archan...@gmail.com
, …
dejian...@gmail.com
4
5/15/16
datum_height == data_mean_.height() when running solver.prototxt?
The problem is told that your input image size is not equal your mean file. As for how to solve it,
unread,
caffe
image_data
prototxt
solver
train_val
datum_height == data_mean_.height() when running solver.prototxt?
The problem is told that your input image size is not equal your mean file. As for how to solve it,
5/15/16
spuran yarram
4/27/16
Multi clas classification of image data set
I have multi class image classification problem , as ai wanted to google Le Ne t for this i resized
unread,
caffe
classification
image
image_data
lmbd
python
ubuntu
Multi clas classification of image data set
I have multi class image classification problem , as ai wanted to google Le Ne t for this i resized
4/27/16
Chias JaJa
,
Ahmed Ibrahim
2
3/31/16
How to change image size to 1*128 (height * width) for CaffeNet?
Conv. layers gets smaller and smaller. you have to create an architecture that can handle such
unread,
batch_size
caffe
data
error
image_data
label
layer
lmdb
output
test
ubuntu
How to change image size to 1*128 (height * width) for CaffeNet?
Conv. layers gets smaller and smaller. you have to create an architecture that can handle such
3/31/16
Fabio Maria Carlucci
, …
Adrián Galdrán
5
3/18/16
Caffe and 16 bit data
Hi! Just a suggestion. It could be that the scale parameter is wrong? If you use scale: 0.00391 = 1/
unread,
caffe
caffe-16bit
image_data
Caffe and 16 bit data
Hi! Just a suggestion. It could be that the scale parameter is wrong? If you use scale: 0.00391 = 1/
3/18/16
Aditi Singh
,
Jan
2
3/9/16
mnist dataset Lenet training
Did you download mnist, via the ./data/mnist/get_mnist.sh command? Reading the docs sometimes really
unread,
caffe
data
error
help
image
image_data
lenet
lmdb
mnist
save
train
training
ubuntu
mnist dataset Lenet training
Did you download mnist, via the ./data/mnist/get_mnist.sh command? Reading the docs sometimes really
3/9/16
Chias JaJa
,
Uzair Ahmed
2
2/9/16
How to remove any layer in Alex CIFAR-10?
You can open the .prototxt file which ontains the networks description and delete the layer you want
unread,
CIFAR
ImageNet
caffe
data
droput
error
example
gpu
image_data
inputs
layer
prototxt
pycaffe
python
How to remove any layer in Alex CIFAR-10?
You can open the .prototxt file which ontains the networks description and delete the layer you want
2/9/16
Ark
11/24/15
Accuracy difference between Data Layer and ImageData Layer
Hi, I was just comparing the Data Layer and ImageData Layer performance using CIFAR-10 Quick model. I
unread,
CIFAR
accuracy
data-layer
image_data
Accuracy difference between Data Layer and ImageData Layer
Hi, I was just comparing the Data Layer and ImageData Layer performance using CIFAR-10 Quick model. I
11/24/15
Saeed Izadi
, …
Beatriz G.
3
2/27/17
Is it possible to use "mean_value" attribute with "ImageData" Layer?
Hi. I am learning how caffe works, and I would like to transofrm my input data in the following way:
unread,
image_data
mean
Is it possible to use "mean_value" attribute with "ImageData" Layer?
Hi. I am learning how caffe works, and I would like to transofrm my input data in the following way:
2/27/17
Hadi Keivan
,
Nam Vo
3
10/29/15
Visualizing with ipython, high accuracy on test but random prediction on ipython
Thnx @Nam for your answer. however, I have generated different datasets RGB, Grayscale and in
unread,
Deploy
accuracy
caffe
grayscale
image_data
ipython
layer
leveldb
prediction
prototxt
pycaffe
snapshot
test
Visualizing with ipython, high accuracy on test but random prediction on ipython
Thnx @Nam for your answer. however, I have generated different datasets RGB, Grayscale and in
10/29/15
文小森
6/20/15
Check failed: status.ok() Failed to open leveldb examples/cifar10/cifar10_train_lmdb Invalid argumen
I want to classify 7 classes.and dataset is flowed by the example of imagenet.and here is the error,
unread,
CIFAR
ImageNet
backward
batch_size
caffe
data
help
image_data
label
memory
ubuntu
Check failed: status.ok() Failed to open leveldb examples/cifar10/cifar10_train_lmdb Invalid argumen
I want to classify 7 classes.and dataset is flowed by the example of imagenet.and here is the error,
6/20/15
Steven
,
Yunjung Kim
3
8/4/15
Problem matching test set accuracy of trained net with C++ Caffe code and Python Caffe code
I received your mail. hum.... really? maybe it's different. Anyway, Thank you for your mention.
unread,
caffe
image_data
lmdb
prediction
prototxt
pycaffe
python
Problem matching test set accuracy of trained net with C++ Caffe code and Python Caffe code
I received your mail. hum.... really? maybe it's different. Anyway, Thank you for your mention.
8/4/15
Matan Goldman
,
李凯
2
9/26/15
Multi-labels in ImageData layer
Did you solve it? 在 2015年4月19日星期日 UTC+8下午4:05:25,mg写道: Hi, I know that HDF5 is the better choice when
unread,
image_data
multitask
Multi-labels in ImageData layer
Did you solve it? 在 2015年4月19日星期日 UTC+8下午4:05:25,mg写道: Hi, I know that HDF5 is the better choice when
9/26/15
Cristina Segalin
,
Prophecies
2
4/29/16
finetune network using imagedata and hdf5 for data layer
Hi, I am trying to do similar thing. Only way I can think of right now is using (a somewhat improved)
unread,
ImageNet
finetune
hdf5
image_data
finetune network using imagedata and hdf5 for data layer
Hi, I am trying to do similar thing. Only way I can think of right now is using (a somewhat improved)
4/29/16
Pastafarianist
,
Xinyu Zhang
2
6/1/16
Mysterious error while running modified LeNet training
I have encountered the similar problem and solved it. Since you have different the input size, so the
unread,
caffe
error
image_data
inputs
mnist
novice
training
Mysterious error while running modified LeNet training
I have encountered the similar problem and solved it. Since you have different the input size, so the
6/1/16
Eren Gölge
,
Evan Shelhamer
2
11/30/14
How to use Caffe as a autoencoder by raw-image data type?
You could start from the MNIST autoencoder example's model definition and solver. For an
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How to use Caffe as a autoencoder by raw-image data type?
You could start from the MNIST autoencoder example's model definition and solver. For an
11/30/14