scholarly journals Colour, Texture, and Shape Features based Object Recognition Using Distance Measures

2021 ◽  
Vol 11 (4) ◽  
pp. 42-50
Author(s):  
S.M. Mohidul Islam ◽  
◽  
Farhana Tazmim Pinki
Author(s):  
Aswathi A S ◽  
Philumon Joseph

The images have to be described by certain features. The shape is an important visual feature in understanding an image, that remains stable in spite of changes in an object's illumination, color, and texture. So shape features have been applied in object recognition tasks. There are many shape description and recognition techniques in the literature. This survey paper provides an overview of description and recognition techniques and examines implementation procedures for each technique and its advantages and disadvantages. Finally, identify some techniques for image retrieval according to standard principles.


2016 ◽  
Vol 321 ◽  
pp. 1135-1141 ◽  
Author(s):  
Guo-Jia Hou ◽  
Xin Luan ◽  
Da-Lei Song ◽  
Xue-Yan Ma

Author(s):  
Muhammad Attamimi ◽  
Djoko Purwanto ◽  
Rudy Dikairono

Author(s):  
S. Hamidreza Kasaei ◽  
Maryam Ghorbani ◽  
Jits Schilperoort ◽  
Wessel van der Rest

AbstractDespite the recent success of state-of-the-art 3D object recognition approaches, service robots still frequently fail to recognize many objects in real human-centric environments. For these robots, object recognition is a challenging task due to the high demand for accurate and real-time response under changing and unpredictable environmental conditions. Most of the recent approaches use either the shape information only and ignore the role of color information or vice versa. Furthermore, they mainly utilize the $$L_n$$ L n Minkowski family functions to measure the similarity of two object views, while there are various distance measures that are applicable to compare two object views. In this paper, we explore the importance of shape information, color constancy, color spaces, and various similarity measures in open-ended 3D object recognition. Toward this goal, we extensively evaluate the performance of object recognition approaches in three different configurations, including color-only, shape-only, and combinations of color and shape, in both offline and online settings. Experimental results concerning scalability, memory usage, and object recognition performance show that all of the combinations of color and shape yield significant improvements over the shape-only and color-only approaches. The underlying reason is that color information is an important feature to distinguish objects that have very similar geometric properties with different colors and vice versa. Moreover, by combining color and shape information, we demonstrate that the robot can learn new object categories from very few training examples in a real-world setting.


2019 ◽  
Author(s):  
Eshed Margalit ◽  
Sarah B. Herald ◽  
Emily X. Meschke ◽  
Isabel Irawan ◽  
Rafael Maarek ◽  
...  

In 1968 Guzman showed how the myriad of surfaces composing a highly complex and novel assemblage of volumes can be readily assigned to their appropriate volumes in terms of the constraints offered by the vertices of coterminating edges. Of particular importance was the L-vertex, produced by the cotermination of two contours, which provides strong evidence for the termination of a 2D surface. An X-junction, formed by the crossing of two contours without a change of direction at the crossing, played no role in the segmentation of the scene. If the potency of noise elements to affect recognition performance reflected their relevancy to the segmentation of scenes, as suggested by Guzman, X-junctions would be expected to have little or no effect on shape-based object recognition whereas L-junctions would be expected to have a strong deleterious effect when disrupting the smooth continuation of contours. Guzman’s roles for the various vertices and junctions have never been put to systematic test with respect to human object recognition. By adding identical noise contours to line drawings of objects that produced either L-vertices or X-junctions, these shape features could be compared with respect to their disruption of object recognition. Guzman’s insights that irrelevant L-vertices should be disruptive and irrelevant X-vertices would have minimal effect were confirmed.


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