
Recherche avancée
Médias (29)
-
#7 Ambience
16 octobre 2011, par
Mis à jour : Juin 2015
Langue : English
Type : Audio
-
#6 Teaser Music
16 octobre 2011, par
Mis à jour : Février 2013
Langue : English
Type : Audio
-
#5 End Title
16 octobre 2011, par
Mis à jour : Février 2013
Langue : English
Type : Audio
-
#3 The Safest Place
16 octobre 2011, par
Mis à jour : Février 2013
Langue : English
Type : Audio
-
#4 Emo Creates
15 octobre 2011, par
Mis à jour : Février 2013
Langue : English
Type : Audio
-
#2 Typewriter Dance
15 octobre 2011, par
Mis à jour : Février 2013
Langue : English
Type : Audio
Autres articles (93)
-
Les autorisations surchargées par les plugins
27 avril 2010, parMediaspip core
autoriser_auteur_modifier() afin que les visiteurs soient capables de modifier leurs informations sur la page d’auteurs -
Support de tous types de médias
10 avril 2011Contrairement à beaucoup de logiciels et autres plate-formes modernes de partage de documents, MediaSPIP a l’ambition de gérer un maximum de formats de documents différents qu’ils soient de type : images (png, gif, jpg, bmp et autres...) ; audio (MP3, Ogg, Wav et autres...) ; vidéo (Avi, MP4, Ogv, mpg, mov, wmv et autres...) ; contenu textuel, code ou autres (open office, microsoft office (tableur, présentation), web (html, css), LaTeX, Google Earth) (...)
-
Gestion de la ferme
2 mars 2010, parLa ferme est gérée dans son ensemble par des "super admins".
Certains réglages peuvent être fais afin de réguler les besoins des différents canaux.
Dans un premier temps il utilise le plugin "Gestion de mutualisation"
Sur d’autres sites (14276)
-
Method For Crawling Google
28 mai 2011, par Multimedia Mike — Big DataI wanted to crawl Google in order to harvest a large corpus of certain types of data as yielded by a certain search term (we’ll call it “term” for this exercise). Google doesn’t appear to offer any API to automatically harvest their search results (why would they ?). So I sat down and thought about how to do it. This is the solution I came up with.
FAQ
Q : Is this legal / ethical / compliant with Google’s terms of service ?
A : Does it look like I care ? Moving right along…Manual Crawling Process
For this exercise, I essentially automated the task that would be performed by a human. It goes something like this :- Search for “term”
- On the first page of results, download each of the 10 results returned
- Click on the next page of results
- Go to step 2, until Google doesn’t return anymore pages of search results
Google returns up to 1000 results for a given search term. Fetching them 10 at a time is less than efficient. Fortunately, the search URL can easily be tweaked to return up to 100 results per page.
Expanding Reach
Problem : 1000 results for the “term” search isn’t that many. I need a way to expand the search. I’m not aiming for relevancy ; I’m just searching for random examples of some data that occurs around the internet.My solution for this is to refine the search using the “site” wildcard. For example, you can ask Google to search for “term” at all Canadian domains using “site :.ca”. So, the manual process now involves harvesting up to 1000 results for every single internet top level domain (TLD). But many TLDs can be more granular than that. For example, there are 50 sub-domains under .us, one for each state (e.g., .ca.us, .ny.us). Those all need to be searched independently. Same for all the sub-domains under TLDs which don’t allow domains under the main TLD, such as .uk (search under .co.uk, .ac.uk, etc.).
Another extension is to combine “term” searches with other terms that are likely to have a rich correlation with “term”. For example, if “term” is relevant to various scientific fields, search for “term” in conjunction with various scientific disciplines.
Algorithmically
My solution is to create an SQLite database that contains a table of search seeds. Each seed is essentially a “site :” string combined with a starting index.Each TLD and sub-TLD is inserted as a searchseed record with a starting index of 0.
A script performs the following crawling algorithm :
- Fetch the next record from the searchseed table which has not been crawled
- Fetch search result page from Google
- Scrape URLs from page and insert each into URL table
- Mark the searchseed record as having been crawled
- If the results page indicates there are more results for this search, insert a new searchseed for the same seed but with a starting index 100 higher
Digging Into Sites
Sometimes, Google notes that certain sites are particularly rich sources of “term” and offers to let you search that site for “term”. This basically links to another search for ‘term site:somesite”. That site gets its own search seed and the program might harvest up to 1000 URLs from that site alone.Harvesting the Data
Armed with a database of URLs, employ the following algorithm :- Fetch a random URL from the database which has yet to be downloaded
- Try to download it
- For goodness sake, have a mechanism in place to detect whether the download process has stalled and automatically kill it after a certain period of time
- Store the data and update the database, noting where the information was stored and that it is already downloaded
This step is easy to parallelize by simply executing multiple copies of the script. It is useful to update the URL table to indicate that one process is already trying to download a URL so multiple processes don’t duplicate work.
Acting Human
A few factors here :- Google allegedly doesn’t like automated programs crawling its search results. Thus, at the very least, don’t let your script advertise itself as an automated program. At a basic level, this means forging the User-Agent : HTTP header. By default, Python’s urllib2 will identify itself as a programming language. Change this to a well-known browser string.
- Be patient ; don’t fire off these search requests as quickly as possible. My crawling algorithm inserts a random delay of a few seconds in between each request. This can still yield hundreds of useful URLs per minute.
- On harvesting the data : Even though you can parallelize this and download data as quickly as your connection can handle, it’s a good idea to randomize the URLs. If you hypothetically had 4 download processes running at once and they got to a point in the URL table which had many URLs from a single site, the server might be configured to reject too many simultaneous requests from a single client.
Conclusion
Anyway, that’s just the way I would (and did) do it. What did I do with all the data ? That’s a subject for a different post. -
FFMPEG SCREENSHOT ERROR : No such filter : 'tile' [closed]
22 mai 2013, par itseasy21i have been trying on making multiple screenshots from a video file using ffmpeg and i succeed too in command but the only problem is while executing that i am getting this error :
No such filter: 'tile'
Error opening filters!The command i execute is :
ffmpeg -ss 00:00:10 -i './tmp/try.avi' -vcodec mjpeg -vframes 1 -vf 'select=not(mod(n\,1000)),scale=320:240,tile=2x3' './tmp/try.jpg'
any solution for this ????
-
x264 rate control set
2 juillet 2015, par chinayinI have been learning x264 encode for months. What I need is to control the rate and get an average bitrate. Following is my set, I got an average bitrate but the picture quality is bad, so I need your suggestion or something that can help me learn more about x264.
Params.rc.i_rc_method = X264_RC_ABR ;
Params.rc.i_bitrate = nBitRate*0.65/1000 ;
Params.rc.i_vbv_buffer_size = nBitRate/1000;
Params.rc.i_vbv_max_bitrate = nBitRate*0.65/1000 ;
Params.rc.f_vbv_buffer_init = 1.0 ;
Params.rc.f_rate_tolerance = 1.0 ;
Params.i_fps_num = ParamIn.dFrameRate*0.6 ;
Params.i_fps_den = 1 ;
Params.i_width = ParamIn.nWidth ;
Params.i_height = ParamIn.nHeight ;