Struct opencv::features2d::SIFT

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pub struct SIFT { /* private fields */ }
Expand description

Class for extracting keypoints and computing descriptors using the Scale Invariant Feature Transform (SIFT) algorithm by D. Lowe Lowe04 .

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impl SIFT

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pub fn create( nfeatures: i32, n_octave_layers: i32, contrast_threshold: f64, edge_threshold: f64, sigma: f64, enable_precise_upscale: bool ) -> Result<Ptr<SIFT>>

Parameters
  • nfeatures: The number of best features to retain. The features are ranked by their scores (measured in SIFT algorithm as the local contrast)

  • nOctaveLayers: The number of layers in each octave. 3 is the value used in D. Lowe paper. The number of octaves is computed automatically from the image resolution.

  • contrastThreshold: The contrast threshold used to filter out weak features in semi-uniform (low-contrast) regions. The larger the threshold, the less features are produced by the detector.

Note: The contrast threshold will be divided by nOctaveLayers when the filtering is applied. When nOctaveLayers is set to default and if you want to use the value used in D. Lowe paper, 0.03, set this argument to 0.09.

  • edgeThreshold: The threshold used to filter out edge-like features. Note that the its meaning is different from the contrastThreshold, i.e. the larger the edgeThreshold, the less features are filtered out (more features are retained).

  • sigma: The sigma of the Gaussian applied to the input image at the octave #0. If your image is captured with a weak camera with soft lenses, you might want to reduce the number.

  • enable_precise_upscale: Whether to enable precise upscaling in the scale pyramid, which maps index inline formula to inline formula. This prevents localization bias. The option is disabled by default.

C++ default parameters
  • nfeatures: 0
  • n_octave_layers: 3
  • contrast_threshold: 0.04
  • edge_threshold: 10
  • sigma: 1.6
  • enable_precise_upscale: false
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pub fn create_1( nfeatures: i32, n_octave_layers: i32, contrast_threshold: f64, edge_threshold: f64, sigma: f64, descriptor_type: i32, enable_precise_upscale: bool ) -> Result<Ptr<SIFT>>

Create SIFT with specified descriptorType.

Parameters
  • nfeatures: The number of best features to retain. The features are ranked by their scores (measured in SIFT algorithm as the local contrast)

  • nOctaveLayers: The number of layers in each octave. 3 is the value used in D. Lowe paper. The number of octaves is computed automatically from the image resolution.

  • contrastThreshold: The contrast threshold used to filter out weak features in semi-uniform (low-contrast) regions. The larger the threshold, the less features are produced by the detector.

Note: The contrast threshold will be divided by nOctaveLayers when the filtering is applied. When nOctaveLayers is set to default and if you want to use the value used in D. Lowe paper, 0.03, set this argument to 0.09.

  • edgeThreshold: The threshold used to filter out edge-like features. Note that the its meaning is different from the contrastThreshold, i.e. the larger the edgeThreshold, the less features are filtered out (more features are retained).

  • sigma: The sigma of the Gaussian applied to the input image at the octave #0. If your image is captured with a weak camera with soft lenses, you might want to reduce the number.

  • descriptorType: The type of descriptors. Only CV_32F and CV_8U are supported.

  • enable_precise_upscale: Whether to enable precise upscaling in the scale pyramid, which maps index inline formula to inline formula. This prevents localization bias. The option is disabled by default.

C++ default parameters
  • enable_precise_upscale: false

Trait Implementations§

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impl AlgorithmTrait for SIFT

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fn as_raw_mut_Algorithm(&mut self) -> *mut c_void

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fn clear(&mut self) -> Result<()>

Clears the algorithm state
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fn read(&mut self, fn_: &FileNode) -> Result<()>

Reads algorithm parameters from a file storage
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impl AlgorithmTraitConst for SIFT

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fn as_raw_Algorithm(&self) -> *const c_void

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fn write(&self, fs: &mut FileStorage) -> Result<()>

Stores algorithm parameters in a file storage
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fn write_1(&self, fs: &mut FileStorage, name: &str) -> Result<()>

Stores algorithm parameters in a file storage Read more
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fn write_with_name(&self, fs: &Ptr<FileStorage>, name: &str) -> Result<()>

@deprecated Read more
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fn empty(&self) -> Result<bool>

Returns true if the Algorithm is empty (e.g. in the very beginning or after unsuccessful read
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fn save(&self, filename: &str) -> Result<()>

Saves the algorithm to a file. In order to make this method work, the derived class must implement Algorithm::write(FileStorage& fs).
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fn get_default_name(&self) -> Result<String>

Returns the algorithm string identifier. This string is used as top level xml/yml node tag when the object is saved to a file or string.
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impl Boxed for SIFT

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unsafe fn from_raw(ptr: *mut c_void) -> Self

Wrap the specified raw pointer Read more
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fn into_raw(self) -> *mut c_void

Return an the underlying raw pointer while consuming this wrapper. Read more
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fn as_raw(&self) -> *const c_void

Return the underlying raw pointer. Read more
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fn as_raw_mut(&mut self) -> *mut c_void

Return the underlying mutable raw pointer Read more
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impl Debug for SIFT

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fn fmt(&self, f: &mut Formatter<'_>) -> Result

Formats the value using the given formatter. Read more
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impl Drop for SIFT

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fn drop(&mut self)

Executes the destructor for this type. Read more
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impl Feature2DTrait for SIFT

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fn as_raw_mut_Feature2D(&mut self) -> *mut c_void

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fn detect( &mut self, image: &impl ToInputArray, keypoints: &mut Vector<KeyPoint>, mask: &impl ToInputArray ) -> Result<()>

Detects keypoints in an image (first variant) or image set (second variant). Read more
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fn detect_multiple( &mut self, images: &impl ToInputArray, keypoints: &mut Vector<Vector<KeyPoint>>, masks: &impl ToInputArray ) -> Result<()>

Detects keypoints in an image (first variant) or image set (second variant). Read more
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fn compute( &mut self, image: &impl ToInputArray, keypoints: &mut Vector<KeyPoint>, descriptors: &mut impl ToOutputArray ) -> Result<()>

Computes the descriptors for a set of keypoints detected in an image (first variant) or image set (second variant). Read more
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fn compute_multiple( &mut self, images: &impl ToInputArray, keypoints: &mut Vector<Vector<KeyPoint>>, descriptors: &mut impl ToOutputArray ) -> Result<()>

Computes the descriptors for a set of keypoints detected in an image (first variant) or image set (second variant). Read more
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fn detect_and_compute( &mut self, image: &impl ToInputArray, mask: &impl ToInputArray, keypoints: &mut Vector<KeyPoint>, descriptors: &mut impl ToOutputArray, use_provided_keypoints: bool ) -> Result<()>

Detects keypoints and computes the descriptors Read more
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fn read(&mut self, file_name: &str) -> Result<()>

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fn read_1(&mut self, unnamed: &FileNode) -> Result<()>

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impl Feature2DTraitConst for SIFT

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fn as_raw_Feature2D(&self) -> *const c_void

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fn descriptor_size(&self) -> Result<i32>

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fn descriptor_type(&self) -> Result<i32>

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fn default_norm(&self) -> Result<i32>

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fn write(&self, file_name: &str) -> Result<()>

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fn write_1(&self, unnamed: &mut FileStorage) -> Result<()>

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fn empty(&self) -> Result<bool>

Return true if detector object is empty
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fn get_default_name(&self) -> Result<String>

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fn write_2(&self, fs: &mut FileStorage, name: &str) -> Result<()>

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fn write_3(&self, fs: &Ptr<FileStorage>, name: &str) -> Result<()>

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impl From<SIFT> for Algorithm

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fn from(s: SIFT) -> Self

Converts to this type from the input type.
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impl From<SIFT> for Feature2D

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fn from(s: SIFT) -> Self

Converts to this type from the input type.
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impl SIFTTrait for SIFT

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fn as_raw_mut_SIFT(&mut self) -> *mut c_void

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fn set_n_features(&mut self, max_features: i32) -> Result<()>

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fn set_n_octave_layers(&mut self, n_octave_layers: i32) -> Result<()>

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fn set_contrast_threshold(&mut self, contrast_threshold: f64) -> Result<()>

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fn set_edge_threshold(&mut self, edge_threshold: f64) -> Result<()>

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fn set_sigma(&mut self, sigma: f64) -> Result<()>

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impl SIFTTraitConst for SIFT

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impl TryFrom<Feature2D> for SIFT

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type Error = Error

The type returned in the event of a conversion error.
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fn try_from(s: Feature2D) -> Result<Self>

Performs the conversion.
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impl Send for SIFT

Auto Trait Implementations§

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impl RefUnwindSafe for SIFT

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impl !Sync for SIFT

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impl Unpin for SIFT

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impl UnwindSafe for SIFT

Blanket Implementations§

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impl<T> Any for Twhere T: 'static + ?Sized,

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fn type_id(&self) -> TypeId

Gets the TypeId of self. Read more
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impl<T> Borrow<T> for Twhere T: ?Sized,

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fn borrow(&self) -> &T

Immutably borrows from an owned value. Read more
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impl<T> BorrowMut<T> for Twhere T: ?Sized,

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fn borrow_mut(&mut self) -> &mut T

Mutably borrows from an owned value. Read more
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impl<T> From<T> for T

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fn from(t: T) -> T

Returns the argument unchanged.

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impl<T, U> Into<U> for Twhere U: From<T>,

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fn into(self) -> U

Calls U::from(self).

That is, this conversion is whatever the implementation of From<T> for U chooses to do.

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impl<T, U> TryFrom<U> for Twhere U: Into<T>,

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type Error = Infallible

The type returned in the event of a conversion error.
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fn try_from(value: U) -> Result<T, <T as TryFrom<U>>::Error>

Performs the conversion.
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impl<T, U> TryInto<U> for Twhere U: TryFrom<T>,

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type Error = <U as TryFrom<T>>::Error

The type returned in the event of a conversion error.
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fn try_into(self) -> Result<U, <U as TryFrom<T>>::Error>

Performs the conversion.