Difference-Deformable Convolution with Pseudo Scale Instance Map for
Cell Localization
Abstract
Cell localization is still facing two unresolved challenges: 1) the
large variability in cell size and shape, coupled with the heterogeneous
intensity distribution of lightly stained cells, presents the bottleneck
limiting accurate cell localization; 2) existing cell location map is
unreasonable, which loses cell scale information and significantly
affects the accuracy of cell counting. To address the challenges from
the cell shape and heterogeneous intensity distribution, we propose a
novel gradient-aware and shape-adaptive Difference-Deformable
Convolution (DDConv), which can focus on the gradient information of
lightly stained cells for overcoming the challenge of heterogeneous
intensity distribution and meanwhile adaptively adjust the shape of the
convolutional kernel for overcoming the challenge of the large
variability in cell shape. Moreover, to solve the challenge of
unreasonable location map, we propose a new cell location map, called
Pseudo-Scale Instance (PSI) map. Our PSI map enables adaptively
computing the scale information and associating it with each cell’s
annotation, which addresses the unreasonable challenges in existing cell
location map and advanced makes the model sensitive to the size of
cells. We analyze and evaluate DDConv and PSI on two challenging cell
localization tasks. Compared with existing methods, our proposed method
has significantly improved the localization performance, setting a new
benchmark for cell localization tasks.