2022
DOI: 10.3390/rs14030482
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Occluded Apple Fruit Detection and Localization with a Frustum-Based Point-Cloud-Processing Approach for Robotic Harvesting

Abstract: Precise localization of occluded fruits is crucial and challenging for robotic harvesting in orchards. Occlusions from leaves, branches, and other fruits make the point cloud acquired from Red Green Blue Depth (RGBD) cameras incomplete. Moreover, an insufficient filling rate and noise on depth images of RGBD cameras usually happen in the shade from occlusions, leading to the distortion and fragmentation of the point cloud. These challenges bring difficulties to position locating and size estimation of fruit fo… Show more

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Cited by 41 publications
(14 citation statements)
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“…Several studies in the past explored sphere fitting approach in 3D environment to estimate fruit size of peaches [34], guava [35], apples [36], pomegranate [37], tomato [38] and citrus [39]. Likewise, ellipsoid fitting technique have been explored to estimate the size of non-spherical fruits such as banana [40], watermelon [41] and mushroom [42].…”
Section: F Size Estimation Using Shape Fitting In 3d Point Clouds For...mentioning
confidence: 99%
“…Several studies in the past explored sphere fitting approach in 3D environment to estimate fruit size of peaches [34], guava [35], apples [36], pomegranate [37], tomato [38] and citrus [39]. Likewise, ellipsoid fitting technique have been explored to estimate the size of non-spherical fruits such as banana [40], watermelon [41] and mushroom [42].…”
Section: F Size Estimation Using Shape Fitting In 3d Point Clouds For...mentioning
confidence: 99%
“…BS cameras use the parallax principle to calculate the depth indirectly through the algorithm. While RGB-D cameras measure depth information more directly through laser, which is mainly divided into cameras based on the structured light (SL) principle, cameras based on the time of Flight (ToF) principle, and active infrared stereo (AIRS) cameras (Li T. et al, 2022).…”
Section: Computer Visionmentioning
confidence: 99%
“…The data presented in Table 6 were derived at IoU = 0.50:0.95. The subscripts are defined as follows: S means small target (area ≤ 32 2 ), M means medium target (32 2 < area ≤ 96 2 ), L means large target (area > 96 2 ), and area denotes the number of pixels [57]. The experiments detailed in this section were conducted to validate the enhanced effect of our model on the small target detection ability.…”
Section: Comparative Experiments With Different Illumination Conditionsmentioning
confidence: 99%
“…The fresh fruit industry is labor-intensive, with apple-picking labor costs accounting for over 50% of total costs [1,2]. As the aging population expands, the working population of China is shrinking, and labor costs are rising.…”
Section: Introductionmentioning
confidence: 99%