-----20 Movies Script Visualizations will be done------This could be done for the 1000+ movie script I segmented--- I just randomly chose 20 movie scripts from the segmented movies....
Web scraping of the movie scripts (Over 1000+ movies were scraped from imsdb website)
Movies segmentation into Scenes --> Scene Location, Scene Action/Description, Scene Dialogues, Scene Characters (All the movies scraped were segmented except those that do not follow the "Screenplay format i.e. INT / EXT)"
Character extraction and appearances plot ---> Here, characters were plotted based on how many times they appeared and spoke in each scene and across the movie.
Character Interaction Mapping --> We mapped out the connection between all the characters in the movie and also the interaction between the Top 10 characters in the movie.
Here, we looked at the Most mentioned character based on the Scene dialogues and also the characters each character mention the most in their conversation.
Similar to Number 5., Here looked at who a specific character talks with the most in the Movie.
Emotional and Sentiment Analysis across the whole movie and for each individual character, However for this project we limited it to only the Top 10 characters. ---> This gives us the character's emotion when he/she appears in the movie.
Additional Scene Informations --> Exact Scene Locations, Scenes with dialogs and no dialogs, Scenes that occurred during the Day or in the Night, Scenes location based on Outdoor or Indoor appearances.
Gender Distribution in the movie
*(python Code) Modules for this project: imsbd_moviescript_scraper_AND_Scene_Segmentation.py, dialogue_appearance.py, characters_extract.py, xter_interaction.py, characters_mt.py, emotions.py, movie_info.py, gend_distribution_plot.py*
Tools: Python libraries
#Import all the necessary python modules needed for this analysis
from characters_extract import extract_characters
from dialogue_appearance import scene_dialogues
from xter_interaction import interaction
from emotions import emotions_sentiments
from characters_mt import character_mentions
from gend_distribution_plot import gender
from movie_info import scene_info_plots
import glob
import random
import secrets
import re
import cufflinks as cf
import networkx as net
import itertools
# plotly
from plotly.subplots import make_subplots
import plotly.graph_objects as go
import pandas as pd
import chart_studio.plotly as py
import plotly.graph_objs as go
from plotly import tools
from plotly.offline import init_notebook_mode, iplot
init_notebook_mode(connected=True)
import plotly.express as px
films = []
for f in glob.glob('Films/*'):
film_name = re.sub(r'.pkl|Films\\', '', f)
films.append(film_name)
#Number of Films we segmented into scenes, scene_actions, characters, and characters dialogue
print('Number of films available for Analysis: ', len(films), ' Movies')
Number of films available for Analysis: 1037 Movies
#Random 10 films from the 1000 films scraped from the internet
films_list = random.sample(films, 10)
#Randomly select film to analyze
film = secrets.choice(films_list)
print(film)
Bourne-Identity,-The
##load the scenes, dialogues, characters into dataframe
df_film = pd.read_pickle('Films/' + film + '.pkl')
df_film_dialogue = pd.read_pickle('Dialogues/' + film + '.pkl')
df_film_characters = pd.read_pickle('Characters/' + film + '.pkl')
#Randomly generate 10 scenes from the movie script
df_film.sample(10)
Scene_Names | Scene_action | Scene_Characters | Scene_Dialogue | Contents | |
---|---|---|---|---|---|
62 | EXT. A ROMAN CAFE DAY | Meet CASTEL. He's thirtyfive. Slender. Cleancu... | None | None | Meet CASTEL. He's thirtyfive. Slender. Cleanc... |
86 | INT. THE PARIS APARTMENT DAY | THE APARTMENT BOURNE in motion five things a... | [THE CONCIERGE, BOURNE, MARIE, BOURNE, MARIE, ... | [still outside the door I am calling the poli... | THE APARTMENT BOURNE in motion five things ... |
131 | EXT. BELLEVILLE COMMERCIAL STREET DAY | The first thing we notice is noise. The street... | [BOURNE, MARIE] | [xxxxxx, xxxxxx ] | The first thing we notice is noise. The stree... |
67 | EXT. ALPS HELICOPTER SHOT DAY | The little red car driving through The Alps. | None | None | The little red car driving through The Alps. |
8 | EXT. FISHING BOAT DECK DAY | THE MAN alone doing chinups on the deck rail. ... | None | None | THE MAN alone doing chinups on the deck rail.... |
25 | INT. BANK RECEPTION AREA DAY | Ornate, formidable and tech at the same time. | [RECEPTIONIST, THE MAN, RECEPTIONIST] | [Can I help you? THE MAN standing before her. ... | Ornate, formidable and tech at the same time.... |
18 | INT. CIA HEADQUARTERS CONFERENCE ROOM DAY | A VIDEO MONITOR FULL FRAME meet WOMBOSI. He'... | [WOMBOSI, MARSHALL, MARSHALL, MARSHALL] | [no, no, no the time is not right, my enemie... | A VIDEO MONITOR FULL FRAME meet WOMBOSI. He... |
60 | INT. BARCELONA GRAND HOUSE MUSIC ROOM DAY | Meet THE PROFESSOR. He's a piano teacher. Late... | None | None | Meet THE PROFESSOR. He's a piano teacher. Lat... |
29 | INT. BANK SAFETY DEPOSIT VIEWING ROOM DAY | Sterile and kind of odd. But total privacy. TH... | [BOURNE, BOURNE] | [My name is Jason Bourne. Hi, I am Jason. Jaso... | Sterile and kind of odd. But total privacy. T... |
31 | EXT. STREETS OF ZURICH DAY VARIOUS SHOTS | BOURNE exits the bank. The red bag full to its... | None | None | BOURNE exits the bank. The red bag full to it... |
#check how many scenes the movie script has
df_film.shape
(158, 5)
#Randomly select characters and their corresponding dialogues
df_film_dialogue.sample(10)
characters | Character_dialogue | |
---|---|---|
464 | ABBOTT | You just blew up a house in Paris This progra... |
96 | DEPUTY DCM | what are you talking about? |
352 | CONKLIN | That was two hours two hours to get a second... |
321 | MARIE | I trusted you. |
530 | BOURNE | What is Treadstone? |
418 | BOURNE | It's a name. Mr. Wombosi owns a thirty millio... |
293 | MARIE | what are you doing?... BOURNE waving her to sh... |
168 | MARIE | Give me a fucking break. BOURNE staring at her... |
358 | MARIE | It's a company... MPG Capital. |
127 | CONKLIN | What? |
ext = extract_characters(df_film, df_film_dialogue, df_film_characters, film)
movie_characters = ext.extract_character_plot()
dia = scene_dialogues(df_film, film)
df_xter_app = dia.character_appearances(movie_characters)
print('Movie Characters: \n', movie_characters)
Movie Characters: ['BOURNE', 'MARIE', 'CONKLIN', 'ABBOTT', 'WOMBOSI', 'THE MAN', 'GIANCARLO', 'ZORN', 'CLERK', 'PROFESSOR', 'MORGUE BOSS', 'RAWLINS', 'SECURITY CHIEF', 'SAILOR', 'WOMAN CLERK', 'MARSHALL', 'MRS. DOYLE', 'DEPUTY DCM', 'CONCIERGE', 'THE MASTER BATHROOM', 'DEAUVAGE', 'TELEPHONE VOICE', 'CAPTAIN', 'RECEPTIONIST', 'THE KITCHEN', 'THE CONCIERGE', 'NEW VOICE']
df_1st_count, df_1st_dialogue = dia.xter_count_perscene(movie_characters[0])
dia.scene_dialogue_plot(df_1st_count)
df_2nd_count, df_2nd_dialogue = dia.xter_count_perscene(movie_characters[1])
dia.scene_dialogue_plot(df_2nd_count)
df_third_count, df_third_dialogue = dia.xter_count_perscene(movie_characters[2])
dia.scene_dialogue_plot(df_third_count)
df_2_count, df_2_dialogue = dia.xter_count_perscene(movie_characters[:2])
dia.scene_dialogue_plot(df_2_count)
# df_3_count, df_3_dialogue = dia.xter_count_perscene(movie_characters[1:3])
# dia.scene_dialogue_plot(df_3_count)
interact = interaction(df_film, film)
graph_list = interact.character_interaction()
# G = net.MultiGraph()
# for scene in graph_list:
# nodes = list(itertools.combinations(scene,2))
# for pair in nodes:
# G.add_edges_from([pair])
# page_ranked_nodes = net.pagerank_numpy(G,0.95)
# net.enumerate_all_cliques(G)
# between_nodes = net.betweenness_centrality(G, normalized=True, endpoints=True)
interact.character_interaction_plot(G, page_ranked_nodes)
#Remember to Re-run the above multigraph code aafter running this code line
graph_list = interact.top10_character_interaction(movie_characters[:10])
interact.character_interaction_plot(G, page_ranked_nodes)
xtr = character_mentions(df_film, movie_characters, film)
xter_mentions = xtr.most_mentioned()
xtr.top_xters_mentions(xter_mentions, 5)
print(movie_characters)
['BOURNE', 'MARIE', 'CONKLIN', 'ABBOTT', 'WOMBOSI', 'THE MAN', 'GIANCARLO', 'ZORN', 'CLERK', 'PROFESSOR', 'MORGUE BOSS', 'RAWLINS', 'SECURITY CHIEF', 'SAILOR', 'WOMAN CLERK', 'MARSHALL', 'MRS. DOYLE', 'DEPUTY DCM', 'CONCIERGE', 'THE MASTER BATHROOM', 'DEAUVAGE', 'TELEPHONE VOICE', 'CAPTAIN', 'RECEPTIONIST', 'THE KITCHEN', 'THE CONCIERGE', 'NEW VOICE']
df_ma = xtr.talk_about_xters(df_film_dialogue, 'MARIE')
df_born = xtr.talk_about_xters(df_film_dialogue, 'BOURNE')
df_CK = xtr.talk_about_xters(df_film_dialogue, 'CONKLIN')
df_BNN = xtr.most_talked_with('BOURNE')
df_mar = xtr.most_talked_with(movie_characters[1])
etn = emotions_sentiments(df_film, film)
df_film_sentiment = etn.film_sentiment('darkslategray')
df_film_emotion = etn.film_emotional_arc()
df_top10_emotions = etn.emotional_content_plot(df_film_dialogue, movie_characters, 11)
df_brn_emotions = etn.emotional_arc_xter_plot(df_film_emotion, 'BOURNE')
df_marie_emotions = etn.emotional_arc_xter_plot(df_film_emotion, 'MARIE')
df_ckl_emotions = etn.emotional_arc_xter_plot(df_film_emotion, 'CONKLIN')
info = scene_info_plots(df_film, film)
info.extract_scene_locations()
info.pie_plots()
gd = gender(movie_characters, film)
df_gender = gd.gender_types(px.colors.sequential.Viridis)
[nltk_data] Downloading package names to C:\Users\Adeboye [nltk_data] Adeniyi\AppData\Roaming\nltk_data... [nltk_data] Package names is already up-to-date!