Feature extractor (#48)
* Create FeatureTest.rs * Create mod.rs * Delete FeatureTest.rs * Added FeatureExtr FeatureExtractor provided by Servostar * Added AverageBrightness Feature * Added Dimension Compare Feature * Update mod.rs * added feature module --------- Co-authored-by: SirTalksalot75 <132705706+SirTalksalot75@users.noreply.github.com>
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use std::sync::Arc;
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#[derive(Debug, Clone, Serialize, Deserialize)]
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enum FeatureResult {
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/// A boolean. Just a boolean
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Bool(bool),
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/// Signed 32-bit integer
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I32(i32),
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/// 32-bit single precision floating point
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/// can be used for aspect ratio or luminance
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F32(f32),
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/// Vector for nested multidimensional
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Vec(Vec<FeatureResult>),
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/// Standard RGBA color
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RGBA(f32, f32, f32, f32),
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/// Indices intended for the usage in historgrams
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Indices(Vec<u64>)
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}
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impl Default for FeatureResult {
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fn default() -> Self {
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FeatureResult::Bool(false)
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}
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}
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/// For some feature return type we want to implement a custom compare function
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/// for example: historgrams are compared with cosine similarity
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impl PartialEq for FeatureResult {
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fn eq(&self, other: &Self) -> bool {
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match (self, other) {
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(Self::Bool(l0), Self::Bool(r0)) => l0 == r0,
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(Self::I32(l0), Self::I32(r0)) => l0 == r0,
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(Self::F32(l0), Self::F32(r0)) => l0 == r0,
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(Self::Vec(l0), Self::Vec(r0)) => l0 == r0,
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(Self::RGBA(l0, l1, l2, l3), Self::RGBA(r0, r1, r2, r3)) => l0 == r0 && l1 == r1 && l2 == r2 && l3 == r3,
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(Self::Indices(_), Self::Indices(_)) => todo!("implement cosine similarity"),
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_ => false,
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}
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}
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}
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type FeatureGenerator = Box<dyn Fn(crate::Arc<Image<f32>>) -> (String, FeatureResult)>;
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#[derive(Serialize, Deserialize, Default)]
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struct Database {
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images: HashMap<String, HashMap<String, FeatureResult>>,
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/// keep feature generator for the case when we add a new image
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/// this field is not serialized and needs to be wrapped in an option
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#[serde(skip)]
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generators: Option<Vec<FeatureGenerator>>
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}
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impl Database {
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pub fn add_feature(&mut self, feature: FeatureGenerator) {
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for (path, features) in self.images.iter_mut() {
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// compute feature for every image
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todo!("run this as a closure parallel with a thread pool");
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let (name, res) = feature(todo!("load image from disk"));
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features.insert(name, res);
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}
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if let Some(generators) = self.generators.as_mut() {
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generators.push(feature);
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} else {
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self.generators = Some(vec![feature])
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}
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}
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pub fn add_image(&mut self, path: String) {
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let image = todo!("load image from disk");
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let mut features = HashMap::new();
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if let Some(generators) = self.generators {
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for generator in generators.iter() {
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let (name, res) = generator(image);
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features.insert(name, res);
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}
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}
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self.images.insert(path, features);
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}
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}
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fn average_luminance(image: Arc<Image<f32>>) -> (String, FeatureResult) {
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let num_pixels = image.pixels.len() as u32;
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let total_brightness: f32 = image.pixels
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.iter()
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.map(|(r, g, b, _)| 0.299 * r + 0.587 * g + 0.114 * b) // Calculate Y for each pixel
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.sum();
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let average_brightness = total_brightness / num_pixels as f32;
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let feature_name = String::from("average-brightness");
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let feature_result = FeatureResult::F32(average_brightness);
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(feature_name, feature_result)
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}
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fn compare_Dim(image0: Arc<Image<f32>>, image1: Arc<Image<f32>>) -> (String, FeatureResult) {
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let a = image0.width as f32 / image0.height as f32;
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let b = image1.width as f32 / image1.height as f32;
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let equal = a == b;
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let feature_name = String::from("Dimension-comparison");
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let feature_result = FeatureResult::Bool(equal);
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(feature_name, feature_result)
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}
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//! # Prebuild features
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//! This module provides a set of prebuild features ready to be used with a database
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//! to index images.
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//! Features include:
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//! - distribution of colors (via histogram)
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//! - distribution of luminance (via histogram)
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//! - average luminance
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//! - aspect ratio of images computed a width/height
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//! All features are designed to used with sRGB color channels only.
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use std::sync::Arc;
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use crate::{image::Image, search_index::FeatureResult};
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#[allow(unused)]
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// from https://github.com/programmieren-mit-rust/pr-ferrisgroup/issues/8 by @SirTalksalot75
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/// Compute a basic distribution of values from all color channels and count their apprearances in buckets.
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/// This function will use 5 buckets per channel.
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fn color_distribution(image: Arc<Image<f32>>) -> (String, FeatureResult) {
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const N: usize = 5;
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let mut histogram = vec![0u64; N * 3 + 1];
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const INV_255: f32 = 1./255. * N as f32;
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for (r, g, b, _) in image.iter() {
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// map linear channel value to bin index
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histogram[ (r * INV_255) as usize] += 1;
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histogram[ (g * INV_255) as usize * 2 ] += 1;
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histogram[ (b * INV_255) as usize * 3 ] += 1;
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}
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(String::from("luminance-distribution"), FeatureResult::Indices(histogram))
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}
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#[allow(unused)]
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// from https://github.com/programmieren-mit-rust/pr-ferrisgroup/issues/8 by @SirTalksalot75
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/// Compute a basic distribution of luminance values and count their apprearances in buckets.
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/// Luminance is calculated via Digital ITU BT.601 and NOT the more common Photometric ITU BT.709
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fn luminance_distribution(image: Arc<Image<f32>>) -> (String, FeatureResult) {
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let mut histogram = vec![0u64; 256]; // Assuming 256 bins for the histogram
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for (r, g, b, _) in image.iter() {
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// map luminance to bin index
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// luminance is a value between 0 and 255.
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let luminance = (0.299 * r + 0.587 * g + 0.114 * b) as usize;
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histogram[luminance] += 1;
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}
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(String::from("luminance-distribution"), FeatureResult::Indices(histogram))
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}
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#[allow(unused)]
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// from https://github.com/programmieren-mit-rust/pr-ferrisgroup/issues/8 by @SirTalksalot75
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/// Compute the average luminance of all pixels in a given image.
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/// Luminance is calculated via Digital ITU BT.601 and NOT the more common Photometric ITU BT.709
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fn average_luminance(image: Arc<Image<f32>>) -> (String, FeatureResult) {
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let num_pixels = image.pixels().len() as u32;
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let total_brightness: f32 = image
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.iter()
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.map(|(r, g, b, _)| (0.299 * r + 0.587 * g + 0.114 * b) / 255.0) // Calculate Y for each pixel
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.sum();
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let average_brightness = total_brightness / num_pixels as f32;
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let feature_name = String::from("average-brightness");
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let feature_result = FeatureResult::Percent(average_brightness);
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(feature_name, feature_result)
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}
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#[allow(unused)]
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// from https://github.com/programmieren-mit-rust/pr-ferrisgroup/issues/8 by @SirTalksalot75
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fn aspect_ratio(image: Arc<Image<f32>>) -> (String, FeatureResult) {
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let a = image.width() as f32 / image.height() as f32;
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(String::from("aspect-ratio"), FeatureResult::Percent(a))
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}
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#[cfg(test)]
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mod test {
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use std::path::Path;
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use crate::search_index::{Database, FeatureGenerator};
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use super::*;
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#[test]
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fn test_histogram() {
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let files: Vec<std::path::PathBuf> = std::fs::read_dir("res/integration/")
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.unwrap()
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.map(|f| f.unwrap().path())
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.collect();
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let feats: Vec<FeatureGenerator> = vec![color_distribution];
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let db = Database::new(&files, feats).unwrap();
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for (path, sim) in db.search(Path::new("res/integration/gray_image.png"), color_distribution).unwrap() {
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let file_name = path.file_name().unwrap().to_str().unwrap();
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if file_name.eq("gray_image.png") {
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assert_eq!(sim, 1.);
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}
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println!("{} {}", file_name, sim);
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}
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}
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#[test]
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fn test_average_luminance() {
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let files: Vec<std::path::PathBuf> = std::fs::read_dir("res/integration/")
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.unwrap()
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.map(|f| f.unwrap().path())
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.collect();
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let feats: Vec<FeatureGenerator> = vec![average_luminance];
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let db = Database::new(&files, feats).unwrap();
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for (path, sim) in db.search(Path::new("res/integration/gray_image.png"), average_luminance).unwrap() {
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let file_name = path.file_name().unwrap().to_str().unwrap();
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if file_name.eq("gray_image.png") {
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assert_eq!(sim, 1.);
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}
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println!("{} {}", file_name, sim);
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}
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}
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#[test]
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fn test_aspect_ratio() {
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let files: Vec<std::path::PathBuf> = std::fs::read_dir("res/integration/")
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.unwrap()
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.map(|f| f.unwrap().path())
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.collect();
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let feats: Vec<FeatureGenerator> = vec![aspect_ratio];
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let db = Database::new(&files, feats).unwrap();
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for (path, sim) in db.search(Path::new("res/integration/gray_image.png"), aspect_ratio).unwrap() {
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let file_name = path.file_name().unwrap().to_str().unwrap();
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if file_name.eq("gray_image.png") {
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assert_eq!(sim, 1.);
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}
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println!("{} {}", file_name, sim);
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}
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}
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}
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src/lib.rs
19
src/lib.rs
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//! # Imsearch
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//! Extensible library for creating an image based search engine.
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//! The library exposes the functionality to create databases which index various images stored as png files.
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//! # Examples
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//! ```ignore
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//! let files: Vec<PathBuf> = std::fs::read_dir("image/folder/")
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//! .unwrap()
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//! .map(|f| f.unwrap().path())
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//! .collect();
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//!
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//! let feats: Vec<FeatureGenerator> = vec![average_rgb_value];
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//!
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//! let db = Database::new(&files, feats).unwrap();
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//!
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//! db.write_to_file(json);
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//! ```
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extern crate core;
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pub mod image;
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pub mod image_loader;
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pub mod multithreading;
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pub mod search_index;
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pub mod feature;
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