Creating a Raster Stack that will save tif filenames as band names in GDAL - gdal

I created a raster stack but i can't set the band names as I desired. I use this code for stacking with Python:
outvrt = ('result/raster_stack_vrt.tif')
outtif = ('result/raster_stack.tif')
tifs = glob.glob('data/*.tif')
outds = gdal.BuildVRT(outvrt, tifs, separate = True)
outds = gdal.Translate(outtif, outds)
Automatic generation of band names can sometimes be confusing. So I want to set the band names to be the same as the name of the tif file of each band when creating raster stack. Is it possible?
Thanks.

Related

Color issue when saving PDF page Pixmap as PNG using PyMuPDF

I'm running the following bit of Python code from the PyMuPDF 1.16.17 documentation, which save PNG images for every page in a PDF file.
import sys, fitz # import the binding
fname = "test.pdf" # get filename from command line
doc = fitz.open(fname) # open document
for page in doc: # iterate through the pages
pix = page.getPixmap()
pix.writePNG("F:/cynthia/page-%i.png" % page.number) # store image as a PNG
The resulting PNG images' colors are off from the PDF originals (too saturated and high contrast). I know function Page.getPixmap() has a "colorspace" argument, and using Document.getPageImageList I found out that my PDF's colorspace is "DeviceCMYK". But when I try to get a Pixmap using CMYK as colorspace (replacing the pix = page.getPixmap() line with pix = page.getPixmap(colorspace="CMYK") or `pix = page.getPixmap(colorspace=csCMYK)), it doesn't change the resulting colors. Any help is appreciated.
Please upgrade your PyMuPDF version. Then ICC color support will be included which should improve your output.

Generate PDF with rectangles

What's the easiest way to generate a PDF file with simple filled rectangles on arbitrary locations on the page, given by coordinates?
Example: For a given pair of coordinates like 100 50 105 80 I would like to get an A4 PDF with a filled rectangle 5mm wide and 30mm high.
Simple coordinate transformations are no problem to make via script, but what's the best technology to use? I already thought about generating a latex source file with \rule, but it seams quite heavyweight when thinking about build automation with docker images.
I figured out one easy way to accomplish this with python, using FPDF's rect method:
from fpdf import FPDF
# Prepare PDF generator
pdf = FPDF(orientation = 'L', unit = 'mm', format = 'A4')
pdf.add_page()
pdf.set_fill_color(0, 0, 0)
# Draw the rectangle
pdf.rect(x = 100, y = 50, w = 5, h = 30, style = 'F')
# Write to file
pdf.output(filename)

How to get chosen class images from Imagenet?

Background
I have been playing around with Deep Dream and Inceptionism, using the Caffe framework to visualize layers of GoogLeNet, an architecture built for the Imagenet project, a large visual database designed for use in visual object recognition.
You can find Imagenet here: Imagenet 1000 Classes.
To probe into the architecture and generate 'dreams', I am using three notebooks:
https://github.com/google/deepdream/blob/master/dream.ipynb
https://github.com/kylemcdonald/deepdream/blob/master/dream.ipynb
https://github.com/auduno/deepdraw/blob/master/deepdraw.ipynb
The basic idea here is to extract some features from each channel in a specified layer from the model or a 'guide' image.
Then we input an image we wish to modify into the model and extract the features in the same layer specified (for each octave),
enhancing the best matching features, i.e., the largest dot product of the two feature vectors.
So far I've managed to modify input images and control dreams using the following approaches:
(a) applying layers as 'end' objectives for the input image optimization. (see Feature Visualization)
(b) using a second image to guide de optimization objective on the input image.
(c) visualize Googlenet model classes generated from noise.
However, the effect I want to achieve sits in-between these techniques, of which I haven't found any documentation, paper, or code.
Desired result (not part of the question to be answered)
To have one single class or unit belonging to a given 'end' layer (a) guide the optimization objective (b) and have this class visualized (c) on the input image:
An example where class = 'face' and input_image = 'clouds.jpg':
please note: the image above was generated using a model for face recognition, which was not trained on the Imagenet dataset. For demonstration purposes only.
Working code
Approach (a)
from cStringIO import StringIO
import numpy as np
import scipy.ndimage as nd
import PIL.Image
from IPython.display import clear_output, Image, display
from google.protobuf import text_format
import matplotlib as plt
import caffe
model_name = 'GoogLeNet'
model_path = 'models/dream/bvlc_googlenet/' # substitute your path here
net_fn = model_path + 'deploy.prototxt'
param_fn = model_path + 'bvlc_googlenet.caffemodel'
model = caffe.io.caffe_pb2.NetParameter()
text_format.Merge(open(net_fn).read(), model)
model.force_backward = True
open('models/dream/bvlc_googlenet/tmp.prototxt', 'w').write(str(model))
net = caffe.Classifier('models/dream/bvlc_googlenet/tmp.prototxt', param_fn,
mean = np.float32([104.0, 116.0, 122.0]), # ImageNet mean, training set dependent
channel_swap = (2,1,0)) # the reference model has channels in BGR order instead of RGB
def showarray(a, fmt='jpeg'):
a = np.uint8(np.clip(a, 0, 255))
f = StringIO()
PIL.Image.fromarray(a).save(f, fmt)
display(Image(data=f.getvalue()))
# a couple of utility functions for converting to and from Caffe's input image layout
def preprocess(net, img):
return np.float32(np.rollaxis(img, 2)[::-1]) - net.transformer.mean['data']
def deprocess(net, img):
return np.dstack((img + net.transformer.mean['data'])[::-1])
def objective_L2(dst):
dst.diff[:] = dst.data
def make_step(net, step_size=1.5, end='inception_4c/output',
jitter=32, clip=True, objective=objective_L2):
'''Basic gradient ascent step.'''
src = net.blobs['data'] # input image is stored in Net's 'data' blob
dst = net.blobs[end]
ox, oy = np.random.randint(-jitter, jitter+1, 2)
src.data[0] = np.roll(np.roll(src.data[0], ox, -1), oy, -2) # apply jitter shift
net.forward(end=end)
objective(dst) # specify the optimization objective
net.backward(start=end)
g = src.diff[0]
# apply normalized ascent step to the input image
src.data[:] += step_size/np.abs(g).mean() * g
src.data[0] = np.roll(np.roll(src.data[0], -ox, -1), -oy, -2) # unshift image
if clip:
bias = net.transformer.mean['data']
src.data[:] = np.clip(src.data, -bias, 255-bias)
def deepdream(net, base_img, iter_n=20, octave_n=4, octave_scale=1.4,
end='inception_4c/output', clip=True, **step_params):
# prepare base images for all octaves
octaves = [preprocess(net, base_img)]
for i in xrange(octave_n-1):
octaves.append(nd.zoom(octaves[-1], (1, 1.0/octave_scale,1.0/octave_scale), order=1))
src = net.blobs['data']
detail = np.zeros_like(octaves[-1]) # allocate image for network-produced details
for octave, octave_base in enumerate(octaves[::-1]):
h, w = octave_base.shape[-2:]
if octave > 0:
# upscale details from the previous octave
h1, w1 = detail.shape[-2:]
detail = nd.zoom(detail, (1, 1.0*h/h1,1.0*w/w1), order=1)
src.reshape(1,3,h,w) # resize the network's input image size
src.data[0] = octave_base+detail
for i in xrange(iter_n):
make_step(net, end=end, clip=clip, **step_params)
# visualization
vis = deprocess(net, src.data[0])
if not clip: # adjust image contrast if clipping is disabled
vis = vis*(255.0/np.percentile(vis, 99.98))
showarray(vis)
print octave, i, end, vis.shape
clear_output(wait=True)
# extract details produced on the current octave
detail = src.data[0]-octave_base
# returning the resulting image
return deprocess(net, src.data[0])
I run the code above with:
end = 'inception_4c/output'
img = np.float32(PIL.Image.open('clouds.jpg'))
_=deepdream(net, img)
Approach (b)
"""
Use one single image to guide
the optimization process.
This affects the style of generated images
without using a different training set.
"""
def dream_control_by_image(optimization_objective, end):
# this image will shape input img
guide = np.float32(PIL.Image.open(optimization_objective))
showarray(guide)
h, w = guide.shape[:2]
src, dst = net.blobs['data'], net.blobs[end]
src.reshape(1,3,h,w)
src.data[0] = preprocess(net, guide)
net.forward(end=end)
guide_features = dst.data[0].copy()
def objective_guide(dst):
x = dst.data[0].copy()
y = guide_features
ch = x.shape[0]
x = x.reshape(ch,-1)
y = y.reshape(ch,-1)
A = x.T.dot(y) # compute the matrix of dot-products with guide features
dst.diff[0].reshape(ch,-1)[:] = y[:,A.argmax(1)] # select ones that match best
_=deepdream(net, img, end=end, objective=objective_guide)
and I run the code above with:
end = 'inception_4c/output'
# image to be modified
img = np.float32(PIL.Image.open('img/clouds.jpg'))
guide_image = 'img/guide.jpg'
dream_control_by_image(guide_image, end)
Question
Now the failed approach how I tried to access individual classes, hot encoding the matrix of classes and focusing on one (so far to no avail):
def objective_class(dst, class=50):
# according to imagenet classes
#50: 'American alligator, Alligator mississipiensis',
one_hot = np.zeros_like(dst.data)
one_hot.flat[class] = 1.
dst.diff[:] = one_hot.flat[class]
To make this clear: the question is not about the dream code, which is the interesting background and which is already working code, but it is about this last paragraph's question only: Could someone please guide me on how to get images of a chosen class (take class #50: 'American alligator, Alligator mississipiensis') from ImageNet (so that I can use them as input - together with the cloud image - to create a dream image)?
The question is how to get images of the chosen class #50: 'American alligator, Alligator mississipiensis' from ImageNet.
Go to image-net.org.
Go to "Download".
Follow the instructions for "Download Image URLs":
How to download the URLs of a synset from your Brower?
1. Type a query in the Search box and click "Search" button
The alligator is not shown. ImageNet is under maintenance. Only ILSVRC synsets are included in the search results. No problem, we are fine with the similar animal "alligator lizard", since this search is about getting to the right branch of the WordNet treemap. I do not know whether you will get the direct ImageNet images here even if there were no maintenance.
2. Open a synset papge
Scrolling down:
Scrolling down:
Searching for the American alligator, which happens to be a saurian diapsid reptile as well, as a near neighbour:
3. You will find the "Download URLs" button under the left-bottom corner of the image browsing window.
You will get all of the URLs with the chosen class. A text file pops up in the browser:
http://image-net.org/api/text/imagenet.synset.geturls?wnid=n01698640
We see here that it is just about knowing the right WordNet id that needs to be put at the end of the URL.
Manual image download
The text file looks as follows:
http://farm1.static.flickr.com/136/326907154_d975d0c944.jpg
http://weeksbay.org/photo_gallery/reptiles/American20Alligator.jpg
...
till image number 1261.
As an example, the first URL links to:
And the second is a dead link:
The third link is dead, but the fourth is working.
The images of these URLs are publicly available, but many links are dead, and the pictures are of lower resolution.
Automated image download
From the ImageNet guide again:
How to download by HTTP protocol? To download a synset by HTTP
request, you need to obtain the "WordNet ID" (wnid) of a synset first.
When you use the explorer to browse a synset, you can find the WordNet
ID below the image window.(Click Here and search "Synset WordNet ID"
to find out the wnid of "Dog, domestic dog, Canis familiaris" synset).
To learn more about the "WordNet ID", please refer to
Mapping between ImageNet and WordNet
Given the wnid of a synset, the URLs of its images can be obtained at
http://www.image-net.org/api/text/imagenet.synset.geturls?wnid=[wnid]
You can also get the hyponym synsets given wnid, please refer to API
documentation to learn more.
So what is in that API documentation?
There is everything needed to get all of the WordNet IDs (so called "synset IDs") and their words for all synsets, that is, it has any class name and its WordNet ID at hand, for free.
Obtain the words of a synset
Given the wnid of a synset, the words of
the synset can be obtained at
http://www.image-net.org/api/text/wordnet.synset.getwords?wnid=[wnid]
You can also Click Here to
download the mapping between WordNet ID and words for all synsets,
Click Here to download the
mapping between WordNet ID and glosses for all synsets.
If you know the WordNet ids of choice and their class names, you can use the nltk.corpus.wordnet of "nltk" (natural language toolkit), see the WordNet interface.
In our case, we just need the images of class #50: 'American alligator, Alligator mississipiensis', we already know what we need, thus we can leave the nltk.corpus.wordnet aside (see tutorials or Stack Exchange questions for more). We can automate the download of all alligator images by looping through the URLs that are still alive. We could also widen this to the full WordNet with a loop over all WordNet IDs, of course, though this would take far too much time for the whole treemap - and is also not recommended since the images will stop being there if 1000s of people download them daily.
I am afraid I will not take the time to write this Python code that accepts the ImageNet class number "#50" as the argument, though that should be possible as well, using mapping tables from WordNet to ImageNet. Class name and WordNet ID should be enough.
For a single WordNet ID, the code could be as follows:
import urllib.request
import csv
wnid = "n01698640"
url = "http://image-net.org/api/text/imagenet.synset.geturls?wnid=" + str(wnid)
# From https://stackoverflow.com/a/45358832/6064933
req = urllib.request.Request(url, headers={'User-Agent': 'Mozilla/5.0'})
with open(wnid + ".csv", "wb") as f:
with urllib.request.urlopen(req) as r:
f.write(r.read())
with open(wnid + ".csv", "r") as f:
counter = 1
for line in f.readlines():
print(line.strip("\n"))
failed = []
try:
with urllib.request.urlopen(line) as r2:
with open(f'''{wnid}_{counter:05}.jpg''', "wb") as f2:
f2.write(r2.read())
except:
failed.append(f'''{counter:05}, {line}'''.strip("\n"))
counter += 1
if counter == 10:
break
with open(wnid + "_failed.csv", "w", newline="") as f3:
writer = csv.writer(f3)
writer.writerow(failed)
Result:
If you need the images even behind the dead links and in original quality, and if your project is non-commercial, you can sign in, see "How do I get a copy of the images?" at the Download FAQ.
In the URL above, you see the wnid=n01698640 at the end of the URL which is the WordNet id that is mapped to ImageNet.
Or in the "Images of the Synset" tab, just click on "Wordnet IDs".
To get to:
or right-click -- save as:
You can use the WordNet id to get the original images.
If you are commercial, I would say contact the ImageNet team.
Add-on
Taking up the idea of a comment: If you do not want many images, but just the "one single class image" that represents the class as much as possible, have a look at Visualizing GoogLeNet Classes and try to use this method with the images of ImageNet instead. Which is using the deepdream code as well.
Visualizing GoogLeNet Classes
July 2015
Ever wondered what a deep neural network thinks a Dalmatian should
look like? Well, wonder no more.
Recently Google published a post describing how they managed to use
deep neural networks to generate class visualizations and modify
images through the so called “inceptionism” method. They later
published the code to modify images via the inceptionism method
yourself, however, they didn’t publish code to generate the class
visualizations they show in the same post.
While I never figured out exactly how Google generated their class
visualizations, after butchering the deepdream code and this ipython
notebook from Kyle McDonald, I managed to coach GoogLeNet into drawing
these:
... [with many other example images to follow]

Convert date/time index of external dataset so that pandas would plot clearly

When you already have time series data set but use internal dtype to index with date/time, you seem to be able to plot the index cleanly as here.
But when I already have data files with columns of date&time in its own format, such as [2009-01-01T00:00], is there a way to have this converted into the object that the plot can read? Currently my plot looks like the following.
Code:
dir = sorted(glob.glob("bsrn_txt_0100/*.txt"))
gen_raw = (pd.read_csv(file, sep='\t', encoding = "utf-8") for file in dir)
gen = pd.concat(gen_raw, ignore_index=True)
gen.drop(gen.columns[[1,2]], axis=1, inplace=True)
#gen['Date/Time'] = gen['Date/Time'][11:] -> cause error, didnt work
filter = gen[gen['Date/Time'].str.endswith('00') | gen['Date/Time'].str.endswith('30')]
filter['rad_tot'] = filter['Direct radiation [W/m**2]'] + filter['Diffuse radiation [W/m**2]']
lis = np.arange(35040) #used the number of rows, checked by printing. THis is for 2009-2010.
plt.xticks(lis, filter['Date/Time'])
plt.plot(lis, filter['rad_tot'], '.')
plt.title('test of generation 2009')
plt.xlabel('Date/Time')
plt.ylabel('radiation total [W/m**2]')
plt.show()
My other approach in mind was to use plotly. Yet again, its main purpose seems to feed in data on the internet. It would be best if I am familiar with all the modules and try for myself, but I am learning as I go to use pandas and matplotlib.
So I would like to ask whether there are anyone who experienced similar issues as I.
I think you need set labels to not visible by loop:
ax = df.plot(...)
spacing = 10
visible = ax.xaxis.get_ticklabels()[::spacing]
for label in ax.xaxis.get_ticklabels():
if label not in visible:
label.set_visible(False)

How to get images filenames from minibatch?

I'm working on this tutorial:
https://github.com/Microsoft/CNTK/blob/master/Tutorials/CNTK_201B_CIFAR-10_ImageHandsOn.ipynb
The test / train data files are simple tab separated text files containing image filenames and correct labels like this:
...\data\CIFAR-10\test\00000.png 3
...\data\CIFAR-10\test\00001.png 8
...\data\CIFAR-10\test\00002.png 8
Assume I create a minibatch like this:
test_minibatch = reader_test.next_minibatch(10)
How can I get to the filenames for the images, which was in the first column of the test data file?
I tried with this code:
orig_features = np.asarray(test_minibatch[features_stream_info].m_data)
print(orig_features)
But, that results in printing the bytes of the images itself.
The file name is lost when loading the images through image reader.
One possible solution is to use a composite reader to load the map file in text format simultaneously. We have composite reader example in here with BrainScript:
https://github.com/Microsoft/CNTK/tree/master/Examples/Image/Regression
With Python, you could do something like:
# read images
image_source = ImageDeserializer(map_file)
image_source.ignore_labels()
image_source.map_features(features_stream_name,
[ImageDeserializer.scale(width=image_width, height=image_height, channels=num_channels,
scale_mode="pad", pad_value=114, interpolations='linear')])
# read rois and labels
roi_source = CTFDeserializer(roi_file)
roi_source.map_input(rois_stream_name, dim=rois_dim, format="dense")
label_source = CTFDeserializer(label_file)
label_source.map_input(labels_stream_name, dim=label_dim, format="dense")
# define a composite reader
rc = ReaderConfig([image_source, roi_source, label_source], epoch_size=sys.maxsize)
return rc.minibatch_source()