24Background 25Recent advances in image-based plant phenotyping have improved our capability to study vegetative stage 26 growth dynamics. However, more complex agronomic traits such as inflorescence architecture (IA), which 27 predominantly contributes to grain crop yield are more challenging to quantify and hence are relatively less 28 explored. Previous efforts to estimate inflorescence-related traits using image-based phenotyping have been 29 limited to destructive end-point measurements. Development of non-destructive inflorescence phenotyping 30 platforms could accelerate the discovery of the phenotypic variation with respect to inflorescence dynamics 31 and mapping of the underlying genes regulating critical yield components. 32
Results 33The major objective of this study is to evaluate post-fertilization development and growth dynamics of 34 inflorescence at high spatial and temporal resolution in rice. For this, we developed the Panicle Imaging 35Platform (PI-Plat) to comprehend multi-dimensional features of IA in a non-destructive manner. We used 36 11 rice genotypes to capture multi-view images of primary panicle on weekly basis after the fertilization. 37These images were used to reconstruct a 3D point cloud of the panicle, which enabled us to extract digital 38 traits such as voxel count and color intensity. We found that the voxel count of developing panicles is 39 positively correlated with seed number and weight at maturity. The voxel count from developing panicles 40 projected overall volumes that increased during the grain filling phase, wherein quantification of color 41 intensity estimated the rate of panicle maturation. Our 3D based phenotyping solution showed superior 42 performance compared to conventional 2D based approaches. 43
Conclusions 44For harnessing the potential of the existing genetic resources, we need a comprehensive understanding of 45 the genotype-to-phenotype relationship. Relatively low-cost sequencing platforms have facilitated high-46 throughput genotyping, while phenotyping, especially for complex traits, has posed major challenges for 47 crop improvement. PI-Plat offers a low cost and high-resolution platform to phenotype inflorescence-48 related traits using 3D reconstruction-based approach. Further, the non-destructive nature of the platform 49 facilitates analyses of the same panicle at multiple developmental time points, which can be utilized to 50 explore the genetic variation for dynamic inflorescence traits in cereals. 51 52 Keywords 53 plant phenotyping, rice, inflorescence dynamics, 3D imaging, panicle volume, voxel count, panicle 54 maturation, grain filling 55 56 3 Background 57With increasing world population, climatic variability and declining arable land resources, the need to 58 increase global food production is paramount [1][2][3]. Two components that are essential for achieving global 59food security involve precise agronomic management and genetic improvement of major crops such as rice, 60 wheat, and maize. Integral to both components is the developm...