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Shape-based Image Retrieval. 4 Image Retrieval by Shape Similarity. Shape. Here: shape is geometry. QBIC – Search by shape. ** Images courtesy : Yong Rao. 在设计描述子时需要考虑的要素. 完整性. 可计算性. 不变性. 鲁棒性. 周边. 离心率. 凸包. 自回归. 弹性. Region-based similar. Contour based similar.
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Shape Here: shape is geometry
QBIC – Search by shape ** Images courtesy : Yong Rao
在设计描述子时需要考虑的要素 完整性 可计算性 不变性 鲁棒性
周边 离心率 凸包 自回归 弹性
Region-based similar Contour based similar
利用x,y两个平面的投影 (视图)描述物体的形状
Region Finding(segmentation) • Instead of (or in addition to) detecting edges in an image, we can also search for homogeneous regions as the basis for scene analysis. • In such regions, the intensity, texture, or other features do not change abruptly (突然地). • Often, both edge detection and region finding are used to complement each other.
Region Finding • Definition of a region: • A region is a set of connected pixels meeting two requirements: • A region is homogeneous. This could be defined as, for example, the maximum difference in intensity values between two pixels being no greater than some threshold . (内部特性) • The union of the pixels of two adjacent regions never satisfies the homogeneity criterion. (不可再扩大性)
The Split-and-Merge Algorithm • 由两个阶段组成 • 1)由上而下的,通过对图像进行划分来发现同质的区域 • 2)由下而上地,通过对邻近同质的区域的合并满足第2个性质。
The Split-and-Merge Algorithm • First, we perform splitting: • At the start of the algorithm, the entire image is considered as the candidate region. • If the candidate region does not meet the homogeneity criterion, we split it into four smaller candidate regions. • This is repeated until there are no candidate regions to be split any more. • Then, we perform merging: • Check all pairs of neighboring regions and merge them if it does not violate the homogeneity criterion.
The Split-and-Merge Algorithm • Sample image 阈值定义为2 即差值<2
The Split-and-Merge Algorithm • First split
The Split-and-Merge Algorithm • Second split
The Split-and-Merge Algorithm • Third split
The Split-and-Merge Algorithm • Merge
The Split-and-Merge Algorithm • Final result
Region Finding • There are a variety of algorithms for region finding. • Another example is “Smooth Region Analysis” (AT&T Cambridge): • Design a filter that detects smoothness of color and texture, • apply the filter to create a smoothness image, • find closed regions of high smoothness.
Region Finding • Sample image
Region Finding • Smoothness image
Region Finding • Resulting regions shaded to their mean color
Chain Codes(Contour description) • An interesting way of describing a contour is using chain codes. • A chain code is an ordered list of local orientations (directions) of a contour. • These local directions are given through the locations of neighboring pixels, so there are only eight different possibilities. • We assign each of these directions a code:
Chain Codes • Then we start at the first edge in the list and go clockwise around the contour. • We add the code for each edge to a list, which becomes our chain code.
Chain Codes • What happens if in our chain code for a given contour we replace every code n with (n mod 8) + 1 ? • The contour will berotated clockwise by 45 degrees. • We can also compute the derivative of a chain code, also referred to as difference code. • Difference codes are rotation-invariant descriptions of contours. • Some features of regions, such as their corners or areas, can be directly computed from chain or difference codes.
Similarity computing • Given two strings A=a1a2…an, B=b1b2…bm • how to measure the dissimilarity between A and B • Given two strings A=a1a2…an, B=b1b2…bm • how to change A to B character by character • using three types of edit operation • (1) insert a character • (2) delete a character • (3) replace one character with a different character • such that the number of edit steps is minimum • Dissimilarity = minimum number of edit steps
The shape through transformation approach • Shapes can be distinguished by measuring the effort needed to transform one shape into another • Similarity is measured as a transformational distance
垂直 伸长率
Use of global features • All shapes are represented as binary images .A set of 22 features is used for their representation: • Area,computed as the number of pixels, set in the binary image • Circularity ,expressed as the ratio between the squared perimeter and the area • Eccentricity (离心率), computed as the ratio between the smallest and the largest eigenvalues
Based on digital moments • If we consider binary images ,where region R (whose shape we want to describe) is the set of points so that ,the digital i, j-th moment of the R is represented by • is the count of and represent the area of R
Based on digital moments • The centroid of R is expressed as :
Based on digital moments • Powerful descriptors based on digital moments are functions of moments that are invariant under scaling , translation , rotation and squeezing . • Normalized moments ,are invariant under translation , scaling , stretching and squeezing transformations
Based on digital moments • Normalized moments are defined by • Considering the central i , j -th moments
Based on digital moments • Normalizing coordinates by their standard deviations and
Based on digital moments • And then normalized by the area : (4.1)
Based on digital moments normalized central moments are obtained from central moments according to the following transformation: (4.2) (4.3)
Based on digital moments • A set of functions are defined from these moments . Six of them are rotation invariant ,and one is both skew and rotation invariant:
SHAPE-BASED RETRIEVAL • Shape transformationapproaches model shape similarity more closely to human perception • These methods are typically more robust in order to cope with shape distortions , support a higher precision in retrieving similar images and allow comparison with partially occluded shapes • Indexing with these approaches is impossible • 具体检索,可以根据基于chain code的相似性计算,面积计算等。更主要的应用是对象发现。